ORIGINAL RESEARCH article

The importance of students’ motivation for their academic achievement – replicating and extending previous findings.

\r\nRicarda Steinmayr*

  • 1 Department of Psychology, TU Dortmund University, Dortmund, Germany
  • 2 Department of Psychology, Philipps-Universität Marburg, Marburg, Germany
  • 3 Department of Psychology, Heidelberg University, Heidelberg, Germany

Achievement motivation is not a single construct but rather subsumes a variety of different constructs like ability self-concepts, task values, goals, and achievement motives. The few existing studies that investigated diverse motivational constructs as predictors of school students’ academic achievement above and beyond students’ cognitive abilities and prior achievement showed that most motivational constructs predicted academic achievement beyond intelligence and that students’ ability self-concepts and task values are more powerful in predicting their achievement than goals and achievement motives. The aim of the present study was to investigate whether the reported previous findings can be replicated when ability self-concepts, task values, goals, and achievement motives are all assessed at the same level of specificity as the achievement criteria (e.g., hope for success in math and math grades). The sample comprised 345 11th and 12th grade students ( M = 17.48 years old, SD = 1.06) from the highest academic track (Gymnasium) in Germany. Students self-reported their ability self-concepts, task values, goal orientations, and achievement motives in math, German, and school in general. Additionally, we assessed their intelligence and their current and prior Grade point average and grades in math and German. Relative weight analyses revealed that domain-specific ability self-concept, motives, task values and learning goals but not performance goals explained a significant amount of variance in grades above all other predictors of which ability self-concept was the strongest predictor. Results are discussed with respect to their implications for investigating motivational constructs with different theoretical foundation.

Introduction

Achievement motivation energizes and directs behavior toward achievement and therefore is known to be an important determinant of academic success (e.g., Robbins et al., 2004 ; Hattie, 2009 ; Plante et al., 2013 ; Wigfield et al., 2016 ). Achievement motivation is not a single construct but rather subsumes a variety of different constructs like motivational beliefs, task values, goals, and achievement motives (see Murphy and Alexander, 2000 ; Wigfield and Cambria, 2010 ; Wigfield et al., 2016 ). Nevertheless, there is still a limited number of studies, that investigated (1) diverse motivational constructs in relation to students’ academic achievement in one sample and (2) additionally considered students’ cognitive abilities and their prior achievement ( Steinmayr and Spinath, 2009 ; Kriegbaum et al., 2015 ). Because students’ cognitive abilities and their prior achievement are among the best single predictors of academic success (e.g., Kuncel et al., 2004 ; Hailikari et al., 2007 ), it is necessary to include them in the analyses when evaluating the importance of motivational factors for students’ achievement. Steinmayr and Spinath (2009) did so and revealed that students’ domain-specific ability self-concepts followed by domain-specific task values were the best predictors of students’ math and German grades compared to students’ goals and achievement motives. However, a flaw of their study is that they did not assess all motivational constructs at the same level of specificity as the achievement criteria. For example, achievement motives were measured on a domain-general level (e.g., “Difficult problems appeal to me”), whereas students’ achievement as well as motivational beliefs and task values were assessed domain-specifically (e.g., math grades, math self-concept, math task values). The importance of students’ achievement motives for math and German grades might have been underestimated because the specificity levels of predictor and criterion variables did not match (e.g., Ajzen and Fishbein, 1977 ; Baranik et al., 2010 ). The aim of the present study was to investigate whether the seminal findings by Steinmayr and Spinath (2009) will hold when motivational beliefs, task values, goals, and achievement motives are all assessed at the same level of specificity as the achievement criteria. This is an important question with respect to motivation theory and future research in this field. Moreover, based on the findings it might be possible to better judge which kind of motivation should especially be fostered in school to improve achievement. This is important information for interventions aiming at enhancing students’ motivation in school.

Theoretical Relations Between Achievement Motivation and Academic Achievement

We take a social-cognitive approach to motivation (see also Pintrich et al., 1993 ; Elliot and Church, 1997 ; Wigfield and Cambria, 2010 ). This approach emphasizes the important role of students’ beliefs and their interpretations of actual events, as well as the role of the achievement context for motivational dynamics (see Weiner, 1992 ; Pintrich et al., 1993 ; Wigfield and Cambria, 2010 ). Social cognitive models of achievement motivation (e.g., expectancy-value theory by Eccles and Wigfield, 2002 ; hierarchical model of achievement motivation by Elliot and Church, 1997 ) comprise a variety of motivation constructs that can be organized in two broad categories (see Pintrich et al., 1993 , p. 176): students’ “beliefs about their capability to perform a task,” also called expectancy components (e.g., ability self-concepts, self-efficacy), and their “motivational beliefs about their reasons for choosing to do a task,” also called value components (e.g., task values, goals). The literature on motivation constructs from these categories is extensive (see Wigfield and Cambria, 2010 ). In this article, we focus on selected constructs, namely students’ ability self-concepts (from the category “expectancy components of motivation”), and their task values and goal orientations (from the category “value components of motivation”).

According to the social cognitive perspective, students’ motivation is relatively situation or context specific (see Pintrich et al., 1993 ). To gain a comprehensive picture of the relation between students’ motivation and their academic achievement, we additionally take into account a traditional personality model of motivation, the theory of the achievement motive ( McClelland et al., 1953 ), according to which students’ motivation is conceptualized as a relatively stable trait. Thus, we consider the achievement motives hope for success and fear of failure besides students’ ability self-concepts, their task values, and goal orientations in this article. In the following, we describe the motivation constructs in more detail.

Students’ ability self-concepts are defined as cognitive representations of their ability level ( Marsh, 1990 ; Wigfield et al., 2016 ). Ability self-concepts have been shown to be domain-specific from the early school years on (e.g., Wigfield et al., 1997 ). Consequently, they are frequently assessed with regard to a certain domain (e.g., with regard to school in general vs. with regard to math).

In the present article, task values are defined in the sense of the expectancy-value model by Eccles et al. (1983) and Eccles and Wigfield (2002) . According to the expectancy-value model there are three task values that should be positively associated with achievement, namely intrinsic values, utility value, and personal importance ( Eccles and Wigfield, 1995 ). Because task values are domain-specific from the early school years on (e.g., Eccles et al., 1993 ; Eccles and Wigfield, 1995 ), they are also assessed with reference to specific subjects (e.g., “How much do you like math?”) or on a more general level with regard to school in general (e.g., “How much do you like going to school?”).

Students’ goal orientations are broader cognitive orientations that students have toward their learning and they reflect the reasons for doing a task (see Dweck and Leggett, 1988 ). Therefore, they fall in the broad category of “value components of motivation.” Initially, researchers distinguished between learning and performance goals when describing goal orientations ( Nicholls, 1984 ; Dweck and Leggett, 1988 ). Learning goals (“task involvement” or “mastery goals”) describe people’s willingness to improve their skills, learn new things, and develop their competence, whereas performance goals (“ego involvement”) focus on demonstrating one’s higher competence and hiding one’s incompetence relative to others (e.g., Elliot and McGregor, 2001 ). Performance goals were later further subdivided into performance-approach (striving to demonstrate competence) and performance-avoidance goals (striving to avoid looking incompetent, e.g., Elliot and Church, 1997 ; Middleton and Midgley, 1997 ). Some researchers have included work avoidance as another component of achievement goals (e.g., Nicholls, 1984 ; Harackiewicz et al., 1997 ). Work avoidance refers to the goal of investing as little effort as possible ( Kumar and Jagacinski, 2011 ). Goal orientations can be assessed in reference to specific subjects (e.g., math) or on a more general level (e.g., in reference to school in general).

McClelland et al. (1953) distinguish the achievement motives hope for success (i.e., positive emotions and the belief that one can succeed) and fear of failure (i.e., negative emotions and the fear that the achievement situation is out of one’s depth). According to McClelland’s definition, need for achievement is measured by describing affective experiences or associations such as fear or joy in achievement situations. Achievement motives are conceptualized as being relatively stable over time. Consequently, need for achievement is theorized to be domain-general and, thus, usually assessed without referring to a certain domain or situation (e.g., Steinmayr and Spinath, 2009 ). However, Sparfeldt and Rost (2011) demonstrated that operationalizing achievement motives subject-specifically is psychometrically useful and results in better criterion validities compared with a domain-general operationalization.

Empirical Evidence on the Relative Importance of Achievement Motivation Constructs for Academic Achievement

A myriad of single studies (e.g., Linnenbrink-Garcia et al., 2018 ; Muenks et al., 2018 ; Steinmayr et al., 2018 ) and several meta-analyses (e.g., Robbins et al., 2004 ; Möller et al., 2009 ; Hulleman et al., 2010 ; Huang, 2011 ) support the hypothesis of social cognitive motivation models that students’ motivational beliefs are significantly related to their academic achievement. However, to judge the relative importance of motivation constructs for academic achievement, studies need (1) to investigate diverse motivational constructs in one sample and (2) to consider students’ cognitive abilities and their prior achievement, too, because the latter are among the best single predictors of academic success (e.g., Kuncel et al., 2004 ; Hailikari et al., 2007 ). For effective educational policy and school reform, it is crucial to obtain robust empirical evidence for whether various motivational constructs can explain variance in school performance over and above intelligence and prior achievement. Without including the latter constructs, we might overestimate the importance of motivation for achievement. Providing evidence that students’ achievement motivation is incrementally valid in predicting their academic achievement beyond their intelligence or prior achievement would emphasize the necessity of designing appropriate interventions for improving students’ school-related motivation.

There are several studies that included expectancy and value components of motivation as predictors of students’ academic achievement (grades or test scores) and additionally considered students’ prior achievement ( Marsh et al., 2005 ; Steinmayr et al., 2018 , Study 1) or their intelligence ( Spinath et al., 2006 ; Lotz et al., 2018 ; Schneider et al., 2018 ; Steinmayr et al., 2018 , Study 2, Weber et al., 2013 ). However, only few studies considered intelligence and prior achievement together with more than two motivational constructs as predictors of school students’ achievement ( Steinmayr and Spinath, 2009 ; Kriegbaum et al., 2015 ). Kriegbaum et al. (2015) examined two expectancy components (i.e., ability self-concept and self-efficacy) and eight value components (i.e., interest, enjoyment, usefulness, learning goals, performance-approach, performance-avoidance goals, and work avoidance) in the domain of math. Steinmayr and Spinath (2009) investigated the role of an expectancy component (i.e., ability self-concept), five value components (i.e., task values, learning goals, performance-approach, performance-avoidance goals, and work avoidance), and students’ achievement motives (i.e., hope for success, fear of failure, and need for achievement) for students’ grades in math and German and their GPA. Both studies used relative weights analyses to compare the predictive power of all variables simultaneously while taking into account multicollinearity of the predictors ( Johnson and LeBreton, 2004 ; Tonidandel and LeBreton, 2011 ). Findings showed that – after controlling for differences in students‘ intelligence and their prior achievement – expectancy components (ability self-concept, self-efficacy) were the best motivational predictors of achievement followed by task values (i.e., intrinsic/enjoyment, attainment, and utility), need for achievement and learning goals ( Steinmayr and Spinath, 2009 ; Kriegbaum et al., 2015 ). However, Steinmayr and Spinath (2009) who investigated the relations in three different domains did not assess all motivational constructs on the same level of specificity as the achievement criteria. More precisely, students’ achievement as well as motivational beliefs and task values were assessed domain-specifically (e.g., math grades, math self-concept, math task values), whereas students’ goals were only measured for school in general (e.g., “In school it is important for me to learn as much as possible”) and students’ achievement motives were only measured on a domain-general level (e.g., “Difficult problems appeal to me”). Thus, the importance of goals and achievement motives for math and German grades might have been underestimated because the specificity levels of predictor and criterion variables did not match (e.g., Ajzen and Fishbein, 1977 ; Baranik et al., 2010 ). Assessing students’ goals and their achievement motives with reference to a specific subject might result in higher associations with domain-specific achievement criteria (see Sparfeldt and Rost, 2011 ).

Taken together, although previous work underlines the important roles of expectancy and value components of motivation for school students’ academic achievement, hitherto, we know little about the relative importance of expectancy components, task values, goals, and achievement motives in different domains when all of them are assessed at the same level of specificity as the achievement criteria (e.g., achievement motives in math → math grades; ability self-concept for school → GPA).

The Present Research

The goal of the present study was to examine the relative importance of several of the most important achievement motivation constructs in predicting school students’ achievement. We substantially extend previous work in this field by considering (1) diverse motivational constructs, (2) students’ intelligence and their prior achievement as achievement predictors in one sample, and (3) by assessing all predictors on the same level of specificity as the achievement criteria. Moreover, we investigated the relations in three different domains: school in general, math, and German. Because there is no study that assessed students’ goal orientations and achievement motives besides their ability self-concept and task values on the same level of specificity as the achievement criteria, we could not derive any specific hypotheses on the relative importance of these constructs, but instead investigated the following research question (RQ):

RQ. What is the relative importance of students’ domain-specific ability self-concepts, task values, goal orientations, and achievement motives for their grades in the respective domain when including all of them, students’ intelligence and prior achievement simultaneously in the analytic models?

Materials and Methods

Participants and procedure.

A sample of 345 students was recruited from two German schools attending the highest academic track (Gymnasium). Only 11th graders participated at one school, whereas 11th and 12th graders participated at the other. Students of the different grades and schools did not differ significantly on any of the assessed measures. Students represented the typical population of this type of school in Germany; that is, the majority was Caucasian and came from medium to high socioeconomic status homes. At the time of testing, students were on average 17.48 years old ( SD = 1.06). As is typical for this kind of school, the sample comprised more girls ( n = 200) than boys ( n = 145). We verify that the study is in accordance with established ethical guidelines. Approval by an ethics committee was not required as per the institution’s guidelines and applicable regulations in the federal state where the study was conducted. Participation was voluntarily and no deception took place. Before testing, we received written informed consent forms from the students and from the parents of the students who were under the age of 18 on the day of the testing. If students did not want to participate, they could spend the testing time in their teacher’s room with an extra assignment. All students agreed to participate. Testing took place during regular classes in schools in 2013. Tests were administered by trained research assistants and lasted about 2.5 h. Students filled in the achievement motivation questionnaires first, and the intelligence test was administered afterward. Before the intelligence test, there was a short break.

Ability Self-Concept

Students’ ability self-concepts were assessed with four items per domain ( Schöne et al., 2002 ). Students indicated on a 5-point scale ranging from 1 (totally disagree) to 5 (totally agree) how good they thought they were at different activities in school in general, math, and German (“I am good at school in general/math/German,” “It is easy to for me to learn in school in general/math/German,” “In school in general/math/German, I know a lot,” and “Most assignments in school/math/German are easy for me”). Internal consistency (Cronbach’s α) of the ability self-concept scale was high in school in general, in math, and in German (0.82 ≤ α ≤ 0.95; see Table 1 ).

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Table 1. Means ( M ), Standard Deviations ( SD ), and Reliabilities (α) for all measures.

Task Values

Students’ task values were assessed with an established German scale (SESSW; Subjective scholastic value scale; Steinmayr and Spinath, 2010 ). The measure is an adaptation of items used by Eccles and Wigfield (1995) in different studies. It assesses intrinsic values, utility, and personal importance with three items each. Students indicated on a 5-point scale ranging from 1 (totally disagree) to 5 (totally agree) how much they valued school in general, math, and German (Intrinsic values: “I like school/math/German,” “I enjoy doing things in school/math/German,” and “I find school in general/math/German interesting”; Utility: “How useful is what you learn in school/math/German in general?,” “School/math/German will be useful in my future,” “The things I learn in school/math/German will be of use in my future life”; Personal importance: “Being good at school/math/German is important to me,” “To be good at school/math/German means a lot to me,” “Attainment in school/math/German is important to me”). Internal consistency of the values scale was high in all domains (0.90 ≤ α ≤ 0.93; see Table 1 ).

Goal Orientations

Students’ goal orientations were assessed with an established German self-report measure (SELLMO; Scales for measuring learning and achievement motivation; Spinath et al., 2002 ). In accordance with Sparfeldt et al. (2007) , we assessed goal orientations with regard to different domains: school in general, math, and German. In each domain, we used the SELLMO to assess students’ learning goals, performance-avoidance goals, and work avoidance with eight items each and their performance-approach goals with seven items. Students’ answered the items on a 5-point scale ranging from 1 (totally disagree) to 5 (totally agree). All items except for the work avoidance items are printed in Spinath and Steinmayr (2012) , p. 1148). A sample item to assess work avoidance is: “In school/math/German, it is important to me to do as little work as possible.” Internal consistency of the learning goals scale was high in all domains (0.83 ≤ α ≤ 0.88). The same was true for performance-approach goals (0.85 ≤ α ≤ 0.88), performance-avoidance goals (α = 0.89), and work avoidance (0.91 ≤ α ≤ 0.92; see Table 1 ).

Achievement Motives

Achievement motives were assessed with the Achievement Motives Scale (AMS; Gjesme and Nygard, 1970 ; Göttert and Kuhl, 1980 ). In the present study, we used a short form measuring “hope for success” and “fear of failure” with the seven items per subscale that showed the highest factor loadings. Both subscales were assessed in three domains: school in general, math, and German. Students’ answered all items on a 4-point scale ranging from 1 (does not apply at all) to 4 (fully applies). An example hope for success item is “In school/math/German, difficult problems appeal to me,” and an example fear of failure item is “In school/math/German, matters that are slightly difficult disconcert me.” Internal consistencies of hope for success and fear of failure scales were high in all domains (hope for success: 0.88 ≤ α ≤ 0.92; fear of failure: 0.90 ≤ α ≤ 0.91; see Table 1 ).

Intelligence

Intelligence was measured with the basic module of the Intelligence Structure Test 2000 R, a well-established German multifactor intelligence measure (I-S-T 2000 R; Amthauer et al., 2001 ). The basic module of the test offers assessments of domain-specific intelligence for verbal, numeric, and figural abilities as well as an overall intelligence score (a composite of the three facets). The overall intelligence score is thought to measure reasoning as a higher order factor of intelligence and can be interpreted as a measure of general intelligence, g . Its construct validity has been demonstrated in several studies ( Amthauer et al., 2001 ; Steinmayr and Amelang, 2006 ). In the present study, we used the scores that were closest to the domains we investigated: overall intelligence, numerical intelligence, and verbal intelligence (see also Steinmayr and Spinath, 2009 ). Raw values could range from 0 to 60 for verbal and numerical intelligence, and from 0 to 180 for overall intelligence. Internal consistencies of all intelligence scales were high (0.71 ≤ α ≤ 0.90; see Table 1 ).

Academic Achievement

For all students, the school delivered the report cards that the students received 3 months before testing (t0) and 4 months after testing (t2), at the end of the term in which testing took place. We assessed students’ grades in German and math as well as their overall grade point average (GPA) as criteria for school performance. GPA was computed as the mean of all available grades, not including grades in the nonacademic domains Sports and Music/Art as they did not correlate with the other grades. Grades ranged from 1 to 6, and were recoded so that higher numbers represented better performance.

Statistical Analyses

We conducted relative weight analyses to predict students’ academic achievement separately in math, German, and school in general. The relative weight analysis is a statistical procedure that enables to determine the relative importance of each predictor in a multiple regression analysis (“relative weight”) and to take adequately into account the multicollinearity of the different motivational constructs (for details, see Johnson and LeBreton, 2004 ; Tonidandel and LeBreton, 2011 ). Basically, it uses a variable transformation approach to create a new set of predictors that are orthogonal to one another (i.e., uncorrelated). Then, the criterion is regressed on these new orthogonal predictors, and the resulting standardized regression coefficients can be used because they no longer suffer from the deleterious effects of multicollinearity. These standardized regression weights are then transformed back into the metric of the original predictors. The rescaled relative weight of a predictor can easily be transformed into the percentage of variance that is uniquely explained by this predictor when dividing the relative weight of the specific predictor by the total variance explained by all predictors in the regression model ( R 2 ). We performed the relative weight analyses in three steps. In Model 1, we included the different achievement motivation variables assessed in the respective domain in the analyses. In Model 2, we entered intelligence into the analyses in addition to the achievement motivation variables. In Model 3, we included prior school performance indicated by grades measured before testing in addition to all of the motivation variables and intelligence. For all three steps, we tested for whether all relative weight factors differed significantly from each other (see Johnson, 2004 ) to determine which motivational construct was most important in predicting academic achievement (RQ).

Descriptive Statistics and Intercorrelations

Table 1 shows means, standard deviations, and reliabilities. Tables 2 –4 show the correlations between all scales in school in general, in math, and in German. Of particular relevance here, are the correlations between the motivational constructs and students’ school grades. In all three domains (i.e., school in general/math/German), out of all motivational predictor variables, students’ ability self-concepts showed the strongest associations with subsequent grades ( r = 0.53/0.61/0.46; see Tables 2 –4 ). Except for students’ performance-avoidance goals (−0.04 ≤ r ≤ 0.07, p > 0.05), the other motivational constructs were also significantly related to school grades. Most of the respective correlations were evenly dispersed around a moderate effect size of | r | = 0.30.

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Table 2. Intercorrelations between all variables in school in general.

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Table 3. Intercorrelations between all variables in math.

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Table 4. Intercorrelations between all variables in German.

Relative Weight Analyses

Table 5 presents the results of the relative weight analyses. In Model 1 (only motivational variables) and Model 2 (motivation and intelligence), respectively, the overall explained variance was highest for math grades ( R 2 = 0.42 and R 2 = 0.42, respectively) followed by GPA ( R 2 = 0.30 and R 2 = 0.34, respectively) and grades in German ( R 2 = 0.26 and R 2 = 0.28, respectively). When prior school grades were additionally considered (Model 3) the largest amount of variance was explained in students’ GPA ( R 2 = 0.73), followed by grades in German ( R 2 = 0.59) and math ( R 2 = 0.57). In the following, we will describe the results of Model 3 for each domain in more detail.

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Table 5. Relative weights and percentages of explained criterion variance (%) for all motivational constructs (Model 1) plus intelligence (Model 2) plus prior school achievement (Model 3).

Beginning with the prediction of students’ GPA: In Model 3, students’ prior GPA explained more variance in subsequent GPA than all other predictor variables (68%). Students’ ability self-concept explained significantly less variance than prior GPA but still more than all other predictors that we considered (14%). The relative weights of students’ intelligence (5%), task values (2%), hope for success (4%), and fear of failure (3%) did not differ significantly from each other but were still significantly different from zero ( p < 0.05). The relative weights of students’ goal orientations were not significant in Model 3.

Turning to math grades: The findings of the relative weight analyses for the prediction of math grades differed slightly from the prediction of GPA. In Model 3, the relative weights of numerical intelligence (2%) and performance-approach goals (2%) in math were no longer different from zero ( p > 0.05); in Model 2 they were. Prior math grades explained the largest share of the unique variance in subsequent math grades (45%), followed by math self-concept (19%). The relative weights of students’ math task values (9%), learning goals (5%), work avoidance (7%), and hope for success (6%) did not differ significantly from each other. Students’ fear of failure in math explained the smallest amount of unique variance in their math grades (4%) but the relative weight of students’ fear of failure did not differ significantly from that of students’ hope for success, work avoidance, and learning goals. The relative weights of students’ performance-avoidance goals were not significant in Model 3.

Turning to German grades: In Model 3, students’ prior grade in German was the strongest predictor (64%), followed by German self-concept (10%). Students’ fear of failure in German (6%), their verbal intelligence (4%), task values (4%), learning goals (4%), and hope for success (4%) explained less variance in German grades and did not differ significantly from each other but were significantly different from zero ( p < 0.05). The relative weights of students’ performance goals and work avoidance were not significant in Model 3.

In the present studies, we aimed to investigate the relative importance of several achievement motivation constructs in predicting students’ academic achievement. We sought to overcome the limitations of previous research in this field by (1) considering several theoretically and empirically distinct motivational constructs, (2) students’ intelligence, and their prior achievement, and (3) by assessing all predictors at the same level of specificity as the achievement criteria. We applied sophisticated statistical procedures to investigate the relations in three different domains, namely school in general, math, and German.

Relative Importance of Achievement Motivation Constructs for Academic Achievement

Out of the motivational predictor variables, students’ ability self-concepts explained the largest amount of variance in their academic achievement across all sets of analyses and across all investigated domains. Even when intelligence and prior grades were controlled for, students’ ability self-concepts accounted for at least 10% of the variance in the criterion. The relative superiority of ability self-perceptions is in line with the available literature on this topic (e.g., Steinmayr and Spinath, 2009 ; Kriegbaum et al., 2015 ; Steinmayr et al., 2018 ) and with numerous studies that have investigated the relations between students’ self-concept and their achievement (e.g., Möller et al., 2009 ; Huang, 2011 ). Ability self-concepts showed even higher relative weights than the corresponding intelligence scores. Whereas some previous studies have suggested that self-concepts and intelligence are at least equally important when predicting students’ grades (e.g., Steinmayr and Spinath, 2009 ; Weber et al., 2013 ; Schneider et al., 2018 ), our findings indicate that it might be even more important to believe in own school-related abilities than to possess outstanding cognitive capacities to achieve good grades (see also Lotz et al., 2018 ). Such a conclusion was supported by the fact that we examined the relative importance of all predictor variables across three domains and at the same levels of specificity, thus maximizing criterion-related validity (see Baranik et al., 2010 ). This procedure represents a particular strength of our study and sets it apart from previous studies in the field (e.g., Steinmayr and Spinath, 2009 ). Alternatively, our findings could be attributed to the sample we investigated at least to some degree. The students examined in the present study were selected for the academic track in Germany, and this makes them rather homogeneous in their cognitive abilities. It is therefore plausible to assume that the restricted variance in intelligence scores decreased the respective criterion validities.

When all variables were assessed at the same level of specificity, the achievement motives hope for success and fear of failure were the second and third best motivational predictors of academic achievement and more important than in the study by Steinmayr and Spinath (2009) . This result underlines the original conceptualization of achievement motives as broad personal tendencies that energize approach or avoidance behavior across different contexts and situations ( Elliot, 2006 ). However, the explanatory power of achievement motives was higher in the more specific domains of math and German, thereby also supporting the suggestion made by Sparfeldt and Rost (2011) to conceptualize achievement motives more domain-specifically. Conceptually, achievement motives and ability self-concepts are closely related. Individuals who believe in their ability to succeed often show greater hope for success than fear of failure and vice versa ( Brunstein and Heckhausen, 2008 ). It is thus not surprising that the two constructs showed similar stability in their relative effects on academic achievement across the three investigated domains. Concerning the specific mechanisms through which students’ achievement motives and ability self-concepts affect their achievement, it seems that they elicit positive or negative valences in students, and these valences in turn serve as simple but meaningful triggers of (un)successful school-related behavior. The large and consistent effects for students’ ability self-concept and their hope for success in our study support recommendations from positive psychology that individuals think positively about the future and regularly provide affirmation to themselves by reminding themselves of their positive attributes ( Seligman and Csikszentmihalyi, 2000 ). Future studies could investigate mediation processes. Theoretically, it would make sense that achievement motives defined as broad personal tendencies affect academic achievement via expectancy beliefs like ability self-concepts (e.g., expectancy-value theory by Eccles and Wigfield, 2002 ; see also, Atkinson, 1957 ).

Although task values and learning goals did not contribute much toward explaining the variance in GPA, these two constructs became even more important for explaining variance in math and German grades. As Elliot (2006) pointed out in his hierarchical model of approach-avoidance motivation, achievement motives serve as basic motivational principles that energize behavior. However, they do not guide the precise direction of the energized behavior. Instead, goals and task values are commonly recruited to strategically guide this basic motivation toward concrete aims that address the underlying desire or concern. Our results are consistent with Elliot’s (2006) suggestions. Whereas basic achievement motives are equally important at abstract and specific achievement levels, task values and learning goals release their full explanatory power with increasing context-specificity as they affect students’ concrete actions in a given school subject. At this level of abstraction, task values and learning goals compete with more extrinsic forms of motivation, such as performance goals. Contrary to several studies in achievement-goal research, we did not demonstrate the importance of either performance-approach or performance-avoidance goals for academic achievement.

Whereas students’ ability self-concept showed a high relative importance above and beyond intelligence, with few exceptions, each of the remaining motivation constructs explained less than 5% of the variance in students’ academic achievement in the full model including intelligence measures. One might argue that the high relative importance of students’ ability self-concept is not surprising because students’ ability self-concepts more strongly depend on prior grades than the other motivation constructs. Prior grades represent performance feedback and enable achievement comparisons that are seen as the main determinants of students’ ability self-concepts (see Skaalvik and Skaalvik, 2002 ). However, we included students’ prior grades in the analyses and students’ ability self-concepts still were the most powerful predictors of academic achievement out of the achievement motivation constructs that were considered. It is thus reasonable to conclude that the high relative importance of students’ subjective beliefs about their abilities is not only due to the overlap of this believes with prior achievement.

Limitations and Suggestions for Further Research

Our study confirms and extends the extant work on the power of students’ ability self-concept net of other important motivation variables even when important methodological aspects are considered. Strength of the study is the simultaneous investigation of different achievement motivation constructs in different academic domains. Nevertheless, we restricted the range of motivation constructs to ability self-concepts, task values, goal orientations, and achievement motives. It might be interesting to replicate the findings with other motivation constructs such as academic self-efficacy ( Pajares, 2003 ), individual interest ( Renninger and Hidi, 2011 ), or autonomous versus controlled forms of motivation ( Ryan and Deci, 2000 ). However, these constructs are conceptually and/or empirically very closely related to the motivation constructs we considered (e.g., Eccles and Wigfield, 1995 ; Marsh et al., 2018 ). Thus, it might well be the case that we would find very similar results for self-efficacy instead of ability self-concept as one example.

A second limitation is that we only focused on linear relations between motivation and achievement using a variable-centered approach. Studies that considered different motivation constructs and used person-centered approaches revealed that motivation factors interact with each other and that there are different profiles of motivation that are differently related to students’ achievement (e.g., Conley, 2012 ; Schwinger et al., 2016 ). An important avenue for future studies on students’ motivation is to further investigate these interactions in different academic domains.

Another limitation that might suggest a potential avenue for future research is the fact that we used only grades as an indicator of academic achievement. Although, grades are of high practical relevance for the students, they do not necessarily indicate how much students have learned, how much they know and how creative they are in the respective domain (e.g., Walton and Spencer, 2009 ). Moreover, there is empirical evidence that the prediction of academic achievement differs according to the particular criterion that is chosen (e.g., Lotz et al., 2018 ). Using standardized test performance instead of grades might lead to different results.

Our study is also limited to 11th and 12th graders attending the highest academic track in Germany. More balanced samples are needed to generalize the findings. A recent study ( Ben-Eliyahu, 2019 ) that investigated the relations between different motivational constructs (i.e., goal orientations, expectancies, and task values) and self-regulated learning in university students revealed higher relations for gifted students than for typical students. This finding indicates that relations between different aspects of motivation might differ between academically selected samples and unselected samples.

Finally, despite the advantages of relative weight analyses, this procedure also has some shortcomings. Most important, it is based on manifest variables. Thus, differences in criterion validity might be due in part to differences in measurement error. However, we are not aware of a latent procedure that is comparable to relative weight analyses. It might be one goal for methodological research to overcome this shortcoming.

We conducted the present research to identify how different aspects of students’ motivation uniquely contribute to differences in students’ achievement. Our study demonstrated the relative importance of students’ ability self-concepts, their task values, learning goals, and achievement motives for students’ grades in different academic subjects above and beyond intelligence and prior achievement. Findings thus broaden our knowledge on the role of students’ motivation for academic achievement. Students’ ability self-concept turned out to be the most important motivational predictor of students’ grades above and beyond differences in their intelligence and prior grades, even when all predictors were assessed domain-specifically. Out of two students with similar intelligence scores, same prior achievement, and similar task values, goals and achievement motives in a domain, the student with a higher domain-specific ability self-concept will receive better school grades in the respective domain. Therefore, there is strong evidence that believing in own competencies is advantageous with respect to academic achievement. This finding shows once again that it is a promising approach to implement validated interventions aiming at enhancing students’ domain-specific ability-beliefs in school (see also Muenks et al., 2017 ; Steinmayr et al., 2018 ).

Data Availability

The datasets generated for this study are available on request to the corresponding author.

Ethics Statement

In Germany, institutional approval was not required by default at the time the study was conducted. That is, why we cannot provide a formal approval by the institutional ethics committee. We verify that the study is in accordance with established ethical guidelines. Participation was voluntarily and no deception took place. Before testing, we received informed consent forms from the parents of the students who were under the age of 18 on the day of the testing. If students did not want to participate, they could spend the testing time in their teacher’s room with an extra assignment. All students agreed to participate. We included this information also in the manuscript.

Author Contributions

RS conceived and supervised the study, curated the data, performed the formal analysis, investigated the results, developed the methodology, administered the project, and wrote, reviewed, and edited the manuscript. AW wrote, reviewed, and edited the manuscript. MS performed the formal analysis, and wrote, reviewed, and edited the manuscript. BS conceived the study, and wrote, reviewed, and edited the manuscript.

We acknowledge financial support by Deutsche Forschungsgemeinschaft and Technische Universität Dortmund/TU Dortmund University within the funding programme Open Access Publishing.

Conflict of Interest Statement

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Ajzen, I., and Fishbein, M. (1977). Attitude–behavior relations: a theoretical analysis and review of empirical research. Psychol. Bull. 84, 888–918. doi: 10.1037/0033-2909.84.5.888

CrossRef Full Text | Google Scholar

Amthauer, R., Brocke, B., Liepmann, D., and Beauducel, A. (2001). Intelligenz-Struktur-Test 2000 R [Intelligence-Structure-Test 2000 R] . Göttingen: Hogrefe.

Google Scholar

Atkinson, J. W. (1957). Motivational determinants of risk-taking behavior. Psychol. Rev. 64, 359–372. doi: 10.1037/h0043445

Baranik, L. E., Barron, K. E., and Finney, S. J. (2010). Examining specific versus general measures of achievement goals. Hum. Perform. 23, 155–172. doi: 10.1080/08959281003622180

Ben-Eliyahu, A. (2019). A situated perspective on self-regulated learning from a person-by-context perspective. High Ability Studies . doi: 10.1080/13598139.2019.1568828

Brunstein, J. C., and Heckhausen, H. (2008). Achievement motivation. in Motivation and Action eds J. Heckhausen and H. Heckhausen. Cambridge: Cambridge University Press, 137–183.

Conley, A. M. (2012). Patterns of motivation beliefs: combining achievement goal and expectancy-value perspectives. J. Educ. Psychol. 104, 32–47. doi: 10.1037/a0026042

Dweck, C. S., and Leggett, E. L. (1988). A social-cognitive approach to motivation and personality. Psychol. Rev. 95, 256–273. doi: 10.1037/0033-295X.95.2.256

Eccles, J. S., Adler, T. F., Futterman, R., Goff, S. B., and Kaczala, C. M., and Meece, J. L. (1983). Expectancies, values, and academic behaviors. in Achievement and Achievement Motivation ed J. T. Spence. San Francisco, CA: Freeman, 75–146

Eccles, J. S., and Wigfield, A. (1995). In the mind of the actor: the structure of adolescents’ achievement task values and expectancy-related beliefs. Pers. Soc. Psychol. Bull. 21, 215–225. doi: 10.1177/0146167295213003

Eccles, J. S., and Wigfield, A. (2002). Motivational beliefs, values, and goals. Annu. Rev. Psychol. 53, 109–132. doi: 10.1146/annurev.psych.53.100901.135153

Eccles, J. S., Wigfield, A., Harold, R. D., and Blumenfeld, P. (1993). Age and gender differences in children’s self- and task perceptions during elementary school. Child Dev. 64, 830–847. doi: 10.2307/1131221

Elliot, A. J. (2006). The hierarchical model of approach-avoidance motivation. Motiv. Emot. 30, 111–116. doi: 10.1007/s11031-006-9028-7

Elliot, A. J., and Church, M. A. (1997). A hierarchical model of approach and avoidance achievement motivation. J. Pers. Soc. Psychol. 72, 218–232. doi: 10.1037/0022-3514.72.1.218

Elliot, A. J., and McGregor, H. A. (2001). A 2 x 2 achievement goal framework. J. Pers. Soc. Psychol. 80, 501–519. doi: 10.1037//0022-3514.80.3.501

Gjesme, T., and Nygard, R. (1970). Achievement-Related Motives: Theoretical Considerations and Construction of a Measuring Instrument . Olso: University of Oslo.

Göttert, R., and Kuhl, J. (1980). AMS — achievement motives scale von gjesme und nygard - deutsche fassung [AMS — German version]. in Motivationsförderung im Schulalltag [Enhancement of Motivation in the School Context] eds F. Rheinberg, and S. Krug, Göttingen: Hogrefe, 194–200

Hailikari, T., Nevgi, A., and Komulainen, E. (2007). Academic self-beliefs and prior knowledge as predictors of student achievement in mathematics: a structural model. Educ. Psychol. 28, 59–71. doi: 10.1080/01443410701413753

Harackiewicz, J. M., Barron, K. E., Carter, S. M., Lehto, A. T., and Elliot, A. J. (1997). Predictors and consequences of achievement goals in the college classroom: maintaining interest and making the grade. J. Pers. Soc. Psychol. 73, 1284–1295. doi: 10.1037//0022-3514.73.6.1284

Hattie, J. A. C. (2009). Visible Learning: A Synthesis of 800+ Meta-Analyses on Achievement . Oxford: Routledge.

Huang, C. (2011). Self-concept and academic achievement: a meta-analysis of longitudinal relations. J. School Psychol. 49, 505–528. doi: 10.1016/j.jsp.2011.07.001

PubMed Abstract | CrossRef Full Text | Google Scholar

Hulleman, C. S., Schrager, S. M., Bodmann, S. M., and Harackiewicz, J. M. (2010). A meta-analytic review of achievement goal measures: different labels for the same constructs or different constructs with similar labels? Psychol. Bull. 136, 422–449. doi: 10.1037/a0018947

Johnson, J. W. (2004). Factors affecting relative weights: the influence of sampling and measurement error. Organ. Res. Methods 7, 283–299. doi: 10.1177/1094428104266018

Johnson, J. W., and LeBreton, J. M. (2004). History and use of relative importance indices in organizational research. Organ. Res. Methods 7, 238–257. doi: 10.1177/1094428104266510

Kriegbaum, K., Jansen, M., and Spinath, B. (2015). Motivation: a predictor of PISA’s mathematical competence beyond intelligence and prior test achievement. Learn. Individ. Differ. 43, 140–148. doi: 10.1016/j.lindif.2015.08.026

Kumar, S., and Jagacinski, C. M. (2011). Confronting task difficulty in ego involvement: change in performance goals. J. Educ. Psychol. 103, 664–682. doi: 10.1037/a0023336

Kuncel, N. R., Hezlett, S. A., and Ones, D. S. (2004). Academic performance, career potential, creativity, and job performance: can one construct predict them all? J. Person. Soc. Psychol. 86, 148–161. doi: 10.1037/0022-3514.86.1.148

Linnenbrink-Garcia, L., Wormington, S. V., Snyder, K. E., Riggsbee, J., Perez, T., Ben-Eliyahu, A., et al. (2018). Multiple pathways to success: an examination of integrative motivational profiles among upper elementary and college students. J. Educ. Psychol. 110, 1026–1048 doi: 10.1037/edu0000245

Lotz, C., Schneider, R., and Sparfeldt, J. R. (2018). Differential relevance of intelligence and motivation for grades and competence tests in mathematics. Learn. Individ. Differ. 65, 30–40. doi: 10.1016/j.lindif.2018.03.005

Marsh, H. W. (1990). Causal ordering of academic self-concept and academic achievement: a multiwave, longitudinal panel analysis. J. Educ. Psychol. 82, 646–656. doi: 10.1037/0022-0663.82.4.646

Marsh, H. W., Pekrun, R., Parker, P. D., Murayama, K., Guo, J., Dicke, T., et al. (2018). The murky distinction between self-concept and self-efficacy: beware of lurking jingle-jangle fallacies. J. Educ. Psychol. 111, 331–353. doi: 10.1037/edu0000281

Marsh, H. W., Trautwein, U., Lüdtke, O., Köller, O., and Baumert, J. (2005). Academic self-concept, interest, grades and standardized test scores: reciprocal effects models of causal ordering. Child Dev. 76, 397–416. doi: 10.1111/j.1467-8624.2005.00853.x

McClelland, D. C., Atkinson, J., Clark, R., and Lowell, E. (1953). The Achievement Motive . New York, NY: Appleton-Century-Crofts.

Middleton, M. J., and Midgley, C. (1997). Avoiding the demonstration of lack of ability: an underexplored aspect of goal theory. Journal J. Educ. Psychol. 89, 710–718. doi: 10.1037/0022-0663.89.4.710

Möller, J., Pohlmann, B., Köller, O., and Marsh, H. W. (2009). A meta-analytic path analysis of the internal/external frame of reference model of academic achievement and academic self-concept. Rev. Educ. Res. 79, 1129–1167. doi: 10.3102/0034654309337522

Muenks, K., Wigfield, A., Yang, J. S., and O’Neal, C. (2017). How true is grit? Assessing its relations to high school and college students’ personality characteristics, self-regulation, engagement, and achievement. J. Educ. Psychol. 109, 599–620. doi: 10.1037/edu0000153.

Muenks, K., Yang, J. S., and Wigfield, A. (2018). Associations between grit, motivation, and achievement in high school students. Motiv. Sci. 4, 158–176. doi: 10.1037/mot0000076

Murphy, P. K., and Alexander, P. A. (2000). A motivated exploration of motivation terminology. Contemp. Educ. Psychol. 25, 3–53. doi: 10.1006/ceps.1999

Nicholls, J. G. (1984). Achievement motivation: conceptions of ability, subjective experience, task choice, and performance. Psychol. Rev. 91, 328–346. doi: 10.1037/0033-295X.91.3.328

Pajares, F. (2003). Self-efficacy beliefs, motivation, and achievement in writing: a review of the literature. Read. Writ. Q. 19, 139–158. doi: 10.1080/10573560308222

Pintrich, P. R., Marx, R. W., and Boyle, R. A. (1993). Beyond cold conceptual change: the role of motivational beliefs and classroom contextual factors in the process of conceptual change. Rev. Educ. Res. 63, 167–199. doi: 10.3102/00346543063002167

Plante, I., O’Keefe, P. A., and Théorêt, M. (2013). The relation between achievement goal and expectancy-value theories in predicting achievement-related outcomes: a test of four theoretical conceptions. Motiv. Emot. 37, 65–78. doi: 10.1007/s11031-012-9282-9

Renninger, K. A., and Hidi, S. (2011). Revisiting the conceptualization, measurement, and generation of interest. Educ. Psychol. 46, 168–184. doi: 10.1080/00461520.2011.587723

Robbins, S. B., Lauver, K., Le, H., Davis, D., Langley, R., and Carlstrom, A. (2004). Do psychosocial and study skill factors predict college outcomes? a meta-analysis. Psychol. Bull. 130, 261–288. doi: 10.1037/0033-2909.130.2.261

Ryan, R. M., and Deci, E. L. (2000). Intrinsic and extrinsic motivations: classic definitions and new directions. Contemp. Educ. Psychol. 25, 54–67. doi: 10.1006/ceps.1999.1020

Schneider, R., Lotz, C., and Sparfeldt, J. R. (2018). Smart, confident, and interested: contributions of intelligence, self-concepts, and interest to elementary school achievement. Learn. Individ. Differ. 62, 23–35. doi: 10.1016/j.lindif.2018.01.003

Schöne, C., Dickhäuser, O., Spinath, B., and Stiensmeier-Pelster, J. (2002). Die Skalen zur Erfassung des schulischen Selbstkonzepts (SESSKO) [Scales for Measuring the Academic Ability Self-Concept] . Göttingen: Hogrefe.

Schwinger, M., Steinmayr, R., and Spinath, B. (2016). Achievement goal profiles in elementary school: antecedents, consequences, and longitudinal trajectories. Contemp. Educ. Psychol. 46, 164–179. doi: 10.1016/j.cedpsych.2016.05.006

Seligman, M. E., and Csikszentmihalyi, M. (2000). Positive psychology: an introduction. Am. Psychol. 55, 5–14. doi: 10.1037/0003-066X.55.1.5

Skaalvik, E. M., and Skaalvik, S. (2002). Internal and external frames of reference for academic self-concept. Educ. Psychol. 37, 233–244. doi: 10.1207/S15326985EP3704_3

Sparfeldt, J. R., Buch, S. R., Wirthwein, L., and Rost, D. H. (2007). Zielorientierungen: Zur Relevanz der Schulfächer. [Goal orientations: the relevance of specific goal orientations as well as specific school subjects]. Zeitschrift für Entwicklungspsychologie und Pädagogische Psychologie , 39, 165–176. doi: 10.1026/0049-8637.39.4.165

Sparfeldt, J. R., and Rost, D. H. (2011). Content-specific achievement motives. Person. Individ. Differ. 50, 496–501. doi: 10.1016/j.paid.2010.11.016

Spinath, B., Spinath, F. M., Harlaar, N., and Plomin, R. (2006). Predicting school achievement from general cognitive ability, self-perceived ability, and intrinsic value. Intelligence 34, 363–374. doi: 10.1016/j.intell.2005.11.004

Spinath, B., and Steinmayr, R. (2012). The roles of competence beliefs and goal orientations for change in intrinsic motivation. J. Educ. Psychol. 104, 1135–1148. doi: 10.1037/a0028115

Spinath, B., Stiensmeier-Pelster, J., Schöne, C., and Dickhäuser, O. (2002). Die Skalen zur Erfassung von Lern- und Leistungsmotivation (SELLMO)[Measurement scales for learning and performance motivation] . Göttingen: Hogrefe.

Steinmayr, R., and Amelang, M. (2006). First results regarding the criterion validity of the I-S-T 2000 R concerning adults of both sex. Diagnostica 52, 181–188.

Steinmayr, R., and Spinath, B. (2009). The importance of motivation as a predictor of school achievement. Learn. Individ. Differ. 19, 80–90. doi: 10.1016/j.lindif.2008.05.004

Steinmayr, R., and Spinath, B. (2010). Konstruktion und Validierung einer Skala zur Erfassung subjektiver schulischer Werte (SESSW) [construction and validation of a scale for the assessment of school-related values]. Diagnostica 56, 195–211. doi: 10.1026/0012-1924/a000023

Steinmayr, R., Weidinger, A. F., and Wigfield, A. (2018). Does students’ grit predict their school achievement above and beyond their personality, motivation, and engagement? Contemp. Educ. Psychol. 53, 106–122. doi: 10.1016/j.cedpsych.2018.02.004

Tonidandel, S., and LeBreton, J. M. (2011). Relative importance analysis: a useful supplement to regression analysis. J. Bus. Psychol. 26, 1–9. doi: 10.1007/s10869-010-9204-3

Walton, G. M., and Spencer, S. J. (2009). Latent ability grades and test scores systematically underestimate the intellectual ability of negatively stereotyped students. Psychol. Sci. 20, 1132–1139. doi: 10.1111/j.1467-9280.2009.02417.x

Weber, H. S., Lu, L., Shi, J., and Spinath, F. M. (2013). The roles of cognitive and motivational predictors in explaining school achievement in elementary school. Learn. Individ. Differ. 25, 85–92. doi: 10.1016/j.lindif.2013.03.008

Weiner, B. (1992). Human Motivation: Metaphors, Theories, and Research . Newbury Park, CA: Sage Publications.

Wigfield, A., and Cambria, J. (2010). Students’ achievement values, goal orientations, and interest: definitions, development, and relations to achievement outcomes. Dev. Rev. 30, 1–35. doi: 10.1016/j.dr.2009.12.001

Wigfield, A., Eccles, J. S., Yoon, K. S., Harold, R. D., Arbreton, A., Freedman-Doan, C., et al. (1997). Changes in children’s competence beliefs and subjective task values across the elementary school years: a three-year study. J. Educ. Psychol. 89, 451–469. doi: 10.1037/0022-0663.89.3.451

Wigfield, A., Tonks, S., and Klauda, S. L. (2016). “Expectancy-value theory,” in Handbook of Motivation in School , 2nd Edn. eds K. R. Wentzel and D. B. Mielecpesnm (New York, NY: Routledge), 55–74.

Keywords : academic achievement, ability self-concept, task values, goals, achievement motives, intelligence, relative weight analysis

Citation: Steinmayr R, Weidinger AF, Schwinger M and Spinath B (2019) The Importance of Students’ Motivation for Their Academic Achievement – Replicating and Extending Previous Findings. Front. Psychol. 10:1730. doi: 10.3389/fpsyg.2019.01730

Received: 05 April 2019; Accepted: 11 July 2019; Published: 31 July 2019.

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Copyright © 2019 Steinmayr, Weidinger, Schwinger and Spinath. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY) . The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

*Correspondence: Ricarda Steinmayr, [email protected]

Disclaimer: All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article or claim that may be made by its manufacturer is not guaranteed or endorsed by the publisher.

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HOW TECHNOLOGY IMPACTS STUDENT ACHIEVEMENT IN THE CLASSROOM

The integration of technology in classrooms has become increasingly prevalent, presenting both opportunities and challenges for educators. This study examines the impact of technology on student performance and behavior, particularly in seventh and eighth-grade classrooms. The COVID-19 pandemic accelerated the shift to online learning, raising concerns about learning loss and disparities in access to technology. Using a needs-based assessment survey, this research investigates teachers' perceptions of technology's effects on student engagement, academic achievement, and retention of curriculum content. The study explores the positive and negative implications of technology use, as well as non-technological strategies employed by teachers to support student learning. Findings reveal that while technology offers benefits such as student-centered education and immediate feedback, it also poses challenges such as distractions and decreased engagement. The study underscores the importance of understanding how technology impacts student learning and behavior and provides insights for developing effective intervention strategies. By considering the perspectives of educators, this research contributes to the ongoing dialogue on technology integration in education and informs evidence-based practices for promoting student success in technology-rich classrooms.

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Portrait Of Smiling Teenage Girl Wearing School Uniform In Kitchen Eating Healthy Breakfast

Breakfast impacts student success, but not in the way you might think

Photo: Getty Images.

Ben Knight

New research suggests a healthy breakfast is important for student motivation and achievement.

We often hear that breakfast is the most important meal of the day, especially as we grow up. It helps us develop, gives us the energy we need for the day ahead, and, as a new study shows, leads to better academic success in school – though not necessarily in the way you would expect.

Findings published recently in the  Journal of School Psychology  show that eating a healthy breakfast can lead to higher levels of motivation and achievement for students that day in school. Meanwhile, eating no breakfast at all can lower levels of motivation and achievement.

However, the study, which was funded by the Australian Research Council and The Future Project at The King’s School, also found that eating an unhealthy breakfast had a similar detrimental effect on motivation and achievement as eating no breakfast at all.

“Many students make less-than-ideal breakfast choices at the start of the school day or skip breakfast altogether,” says  Scientia Professor Andrew Martin , lead author of the study and an educational psychologist from the  School of Education  at  UNSW Arts, Design & Architecture . “Our findings highlight that eating a healthy breakfast each and every morning improves student motivation and academic achievement.”

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Andrew Martin

The most important meal of the day

The research team studied 648 Australian high school students from five schools in New South Wales to investigate the role of breakfast consumption and quality on students’ self-reported science motivation and achievement in a science test. They surveyed the students on what they ate that morning and what they usually eat and created a score for their breakfast habits based on dietary guidelines from the National Health and Medical Research Council (NHMRC). They then tested the students’ motivation in science classes, who then completed the science test based on the syllabus content.

“In the survey, we asked many questions about their background to help us control for various factors including socioeconomic status, gender, physical activity, previous achievement and conscientiousness to isolate the impact of breakfast on motivation and achievement,” Prof. Martin says. “We were also careful to time it right so we could better determine the process, with the breakfast in the morning preceding the levels of motivation and achievement we saw later that day.”

They found that students who ate a healthy breakfast the morning of the study were more motivated and achieved better test scores. Meanwhile, students who ate an unhealthy breakfast or no breakfast that morning measured lower for motivation and scored lower in their science test, regardless of whether they usually ate a healthy or unhealthy breakfast or previously performed well on science tests.

“As you might expect, eating a healthy breakfast every day is good for students’ motivation and achievement while skipping breakfast is not so good,” Prof. Martin says. “Somewhat unexpectedly, eating an unhealthy breakfast could be as disruptive to motivation and achievement as not eating breakfast at all.

“In fact, simply having breakfast isn’t enough to gain the full benefits of eating breakfast; quality is also important for optimal motivation.”

Eating a healthy breakfast each and every morning improves student motivation and academic achievement. Prof. Andrew Martin

The research also found while breakfast predicted student motivation, it did not predict student achievement. Instead, motivation predicted achievement.

“A healthy breakfast has traditionally been associated with improved academic performance, but the motivational factors implicated in this process have not been well understood,” Prof. Martin says.

Breakfast as an educational intervention

The extent to which a regular healthy breakfast impacts student motivation and achievement has implications for educational policy and practice.

“Having a healthy breakfast is somewhat within a student’s immediate control and could potentially be addressed either at school or home through better health education and communication,” Prof. Martin says.

Schools and the school system can better support students by offering a healthy breakfast option at school, including information about healthy breakfast in the curriculum, and communicating with parents at home about healthy breakfast ideas and strategies.

“It is possible to incorporate a healthy breakfast or morning snack into the school day,” Prof. Martin says, “School-based breakfast programs are one avenue for this, or schools might consider providing students with a mid-morning snack, especially for students from disadvantaged or food-insecure homes.”

However, there may be other barriers that schools need to keep in mind. For example, some students may decline a free breakfast if it is stigmatised and seen as for “poor kids”, while others may have body image worries or cultural and dietary needs.

“If we can manage these considerations, starting each day with a healthy breakfast could be a relatively achievable change in a student’s life that has a notable positive impact on their educational outcomes,” Prof. Martin says.

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Spring 2024 Student Achievement Spotlights

Several of our students have been accepted into summer programs or taken jobs that will start in Fall. Here are a few highlights.

Candice De Anda

Geology scholar Candice De Anda was accepted to the Astronomy and Planetary Science Ph.D. program at Northern Arizona University. She will be working with Dr. Alicia Rutledge on glacial sediment samples from Sweden as analogs to Mars environments. They will be investigating the composition, formation, and morphology of these glacial sediments to help piece together the cryospheric history of Mars and determine the future of habitability on the planet. Candice is ecstatic about being accepted to this program. Never in a million years would she believe that she would one day get to live her dream of studying Mars and other planets! METRIC has helped give her the tools and resources needed to get here.

Sabrina Ansari

Geology scholar Sabrina Ansari has been accepted into the M.S. in Geological Sciences program at Central Washington University. She will be working with Dr. Hannah Shamloo on two potential projects. The first one is starting research on Goat Rocks, which is an extinct Cascade volcanic complex. They would be using zircon geochemistry to understand magmatic sequences and eruption events. Research like this has never been done on a Cascade volcano and would be the first of its kind. Another project would involve Mount Baker, which is a high threat, active volcano. They would be trying to understand its timescale eruption triggers using diffusion chronometry in crystals. These projects will be using geochemistry of crystals, petrologic modeling, lab techniques, and lab equipment to help further her research skills and prepare her for a PhD or a job with the USGS. Sabrina is so excited to start research pertaining to volcanology, she has dreamed of doing this since she started school back in 2020.

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Mathematics scholar Keanu Keopimpha has been accepted to the Big Data Summer Institute research program at the University of Michigan-Ann Arbor. This program introduces undergraduate students to the intersection of big data and human health — a rapidly growing field that uses quantitative analysis to help solve scientific problems and improve people's lives. He will choose to pursue one of the three projects involving cancer data science, data mining and machine learning in healthcare data, and genomics. The support from METRIC, which introduced him to these research opportunities and guided him through the application process was invaluable in his successful application period.

Chase Owen

Physics scholar Chase Owen will be joining the U.S. Navy's NUPOC program after his graduation in Spring 2025. He will be working on nuclear reactors that power the Navy's ships. Chase currently works at UC Riverside helping to build a calorimeter that will be used in the new particle collider (EIC) being built in Brookhaven, NY. This summer, Chase will be working at the Lawrence Livermore National Laboratory in Berkeley, CA. Chase is elated that he will be using his skills in nuclear/particle physics to contribute to the safety of the United States. METRIC has helped give him the freedom and resources needed to get there.

Jose Pineda

Physics scholar Jose Pineda has been accepted to the Smithsonian Astrophysical Observatory's (SAO) Summer Intern Program in Cambridge, Massachusetts from June 2 to August 10. He was also accepted from the Caltech LIGO SURF program. His summer research project will be based on the Energy Extraction via Magnetic Reconnection in a Rotating Black Hole with a Negative Spacetime Curvature. METRIC has played a crucial role in his ability to find and apply to these opportunities. Without the financial aid of METRIC, he would need to work, leaving him without much time to seek out opportunities and much less going through the process of applying. METRIC has allowed him to fully devote his time to school and pursue his research goals.

Jandrie Rodriguez

Physics scholar Jandrie Rodriguez will be attending Syracuse University's PhD program in Physics in Fall 2024. She is currently interested in working with the Gravitational Experimental Physics group. She is very excited for this opportunity as it has been a long-time goal of hers to attend a PhD program and study subjects that align with my interest in gravitational physics. METRIC was a crucial support system to reach her goal and in molding her to be the person she is now. With the benefits from METRIC, she is certain that she is ready for research at a graduate level and can maintain her own support system along with providing a supporting space for others.

Computer Science and Computer Engineering

Oswaldo Olson

Computer Science Scholar Oswaldo Olson was accepted to New Mexico Cybersecurity Center of Excellence's Research Experiences for Undergraduates, where he will be engaged with cutting-edge research in cybersecurity. Currently in his third year, Oswaldo is interning at two tech companies. One of them is with Pacific Gateway, working collaboratively with the city of Long Beach to prioritize problems, identify powerful solutions, and manage for results that improve community. The other one is with LA-tech, learning how to prevent cybersecurity attacks and use of AI. It is because METRIC and the mentors, Oswaldo learned about the REU program he was accepted in. The support he has received from METRIC, even after just one semester, has been so invaluable in getting him closer to his goals.

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academic achievement in thesis

2024 Honors & Awards Ceremony

Welcome to the 2024 Honors & Awards Ceremony page. Awardees will be listed under their award category. Congrats to all of our winners!

Here are pictures from the event.

award winners from MAE awards in 2024

Idaho State University proudly acknowledges the outstanding achievements of its brightest and most committed students through the unveiling of the 2024 Outstanding Student Achievement Awards, sponsored by the ISU Alumni Association.

These exceptional students have not only demonstrated academic excellence but have also shown a profound dedication to their respective colleges, communities and peers. We take great pride in announcing this year’s Outstanding Student Achievement Award Recipients.

College of Arts and Letters Fine Arts: Miren Gabiola Social Sciences: Emma Watts

College of Business Nicolette Scarduzio

College of Education Andrew Sagendorf

College of Health Undergraduate Student: Marah Pauruso Graduate Student: Juanita del Pilar Triana Melo

College of Pharmacy Caleb Quates

College of Science and Engineering Natural Sciences: Alyssa Farnes Physical, Computational, and Engineering Sciences: Andrew J Anderson

College of Technology Soren Alton Ochsner

Graduate School Masters Candidate: Juliette Bedard Doctoral Candidate: Aimee Bozeman

We invite you to join us in celebrating these remarkable students at the Outstanding Student Achievement Awards Ceremony hosted at the ICCU Bengal Alumni Center on Thursday, February 8, at 6 p.m. This event serves as a moment to honor the diligence and commitment of these students as they embark on the next phase of their Bengal journey.

For additional details about the awardees and to confirm your attendance, please reach out to the Alumni Association at (208) 282-3755 or visit alumni.isu.edu . 

Let us come together to extend well-deserved recognition to these students for their exceptional accomplishments and contributions during their tenure at ISU. Congratulations to the recipients of the 2024 Outstanding Student Achievement Awards!

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  1. (PDF) Thesis Title:A Study of Academic Achievement Analysis System

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  2. Sample Survey Thesis Questionnaire About Academic Performance

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  5. Research Paper Objectives Of The Study Sample Thesis

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  6. Survey Thesis Questionnaire About Academic Performance

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COMMENTS

  1. (PDF) Academic Achievement

    Abstract. Academic achievement represents performance outcomes that indicate the extent to which a person has accomplished specific goals that were the focus of activities in instructional ...

  2. Full article: Academic achievement

    Phillip J. Moore. Academic achievement was once thought to be the most important outcome of formal educational experiences and while there is little doubt as to the vital role such achievements play in student life and later (Kell, Lubinski, & Benbow, 2013 ), researchers and policy makers are ever increasingly turning to social and emotional ...

  3. PDF Teacher and Teaching Effects on Students' Academic Performance

    student achievement. I build on this discussion by exploiting within-school, between-grade, and cross-cohort variation in scores from two observation instruments; further, I condition on a uniquely rich set of teacher characteristics, practices, and skills. Findings indicate that inquiry-oriented instruction positively predicts student achievement.

  4. PDF THE FACTORS AFFECTING ACADEMIC ACHIEVEMENT: A SYSTEMATIC REVIEW OF ...

    on and correlations with academic achievement. Academic achievement was measured with school degree and standardized tests, and studies that were correlated with academic achievement or whose effects on academic achievement were clearly demonstrated in meta-analyses were included in this paper. The flow described by Moher, Liberati, Tetzlaff ...

  5. Participation in Extracurricular Activities and Academic Achievement: A

    This Thesis is brought to you for free and open access by TopSCHOLAR®. It has been accepted for inclusion in Masters Theses & Specialist Projects by ... academic achievement (AA) is commonly measured by yearly state-required assessments, the Scholastic Aptitude Test (SAT), or American College Test (ACT) (Qiu & Wu, 2011). Academic Achievement ...

  6. PDF A Study of Factors that Influence College Academic Achievement: A

    if they play a role in student's academic achievement. The findings will give rise to further hypotheses, thereby increasing the probability of adding to existing knowledge in this field. The purpose of this study was to explore the degree of influence learning environment factors, both institutional and individual, have on academic achievement.

  7. PDF Factors Affecting Students' Academic Achievement according to the

    academic achievement, it is expected that students will successfully carry out the tasks given to them, display a perfectionist approach, show resistance in the face of obstacles and develop strategies for overcoming difficulties that they face (Cox, 1990). Among the important factors affecting students'

  8. The Importance of Students' Motivation for Their Academic Achievement

    Introduction. Achievement motivation energizes and directs behavior toward achievement and therefore is known to be an important determinant of academic success (e.g., Robbins et al., 2004; Hattie, 2009; Plante et al., 2013; Wigfield et al., 2016).Achievement motivation is not a single construct but rather subsumes a variety of different constructs like motivational beliefs, task values, goals ...

  9. Full article: Academic performance and assessment

    Scholars agree that students' academic achievement is a 'net result' of their cognitive and non-cognitive attributes (Lee & Shute, Citation 2010; Lee & Stankov, Citation 2016) as well as the sociocultural context in which the learning process takes place (Liem & McInerney, Citation 2018; Liem & Tan, Citation 2019).The present issue comprises eight papers that look into the extent to ...

  10. An Investigation of The Relationship Between Academic Achievement

    results revealed a student's sense of belongingness, another humanistic need, is linked positively with academic achievement (Gonzales, 1996; E. Kim & Irwin, 2013). This information highlights the main desire of educators, which is to find which satisfied needs correlate with academic achievement.

  11. Strategies to Improve Academic Achievement in Secondary School Students

    These persistent gaps in academic achievement between Whites and racial and ethnic minorities evident nationally across all 12th-grade students have significant implications for post-high school study and vocational training. Many of these students who apply to 2- and 4-year colleges often find themselves taking remedial courses during their ...

  12. The Impact of Mental Health Issues on Academic Achievement in High

    Sutherland, Patricia Lea, "THE IMPACT OF MENTAL HEALTH ISSUES ON ACADEMIC ACHIEVEMENT IN HIGH SCHOOL STUDENTS" (2018). Electronic Theses, Projects, and Dissertations. 660. https://scholarworks.lib.csusb.edu/etd/660. This Project is brought to you for free and open access by the Ofice of Graduate Studies at CSUSB ScholarWorks.

  13. PDF The Effect of Socio-economic Status on Academic Achievement

    an educational institution. SRP involves factors such as, sex of the student, students'. race/ethnicity, school effort, extracurricular activities, deviant behavior, and student disabilities. The affect that sex has on a student's academic achievement has been debated and heavily.

  14. An Investigation of Parental Involvement and Student Academic

    correlation revealed that there were two significant positive correlations between parental. involvement and student academic achievement, which were parents signing weekly grade. reports and parents initiating calls with the school, r = .586, p = .01, and parents signing weekly.

  15. Academic Achievement

    Academic achievement is an indicator of progression in the educational domain that indicates the degree to which an adolescent has attained specific goals entailed in the activities of school ...

  16. The Impact Of Parental Involvement On Academic Achievement In Children

    This Thesis is brought to you for free and open access by the Theses, Dissertations, and Senior Projects at UND Scholarly Commons. It has been accepted for inclusion in Theses and Dissertations by an authorized administrator ... academic achievement has evaluated the relationship between parental involvement in children's education and ...

  17. The Impact of Parental Involvement on Adolescents' Academic Achievement

    As parental involvement increases, the student's growth mindset increases in a. statistically significant way (beta = 0.31; p <0.01) and parental involvement accounts for. at least 10% of the variance in students' growth mindsets. In addition, as parental involvement increases, the student's motivation to achieve.

  18. (PDF) Academic Achievement

    Received on 04-05-2016 Accepted on 30-05-2016. Abstract. Introduction: Academic achievement motivation is critical particularly among university students. With this motivation, individuals gain ...

  19. Socioeconomic Status and Academic Achievement

    Socioeconomic Status and the Achievement Gap. Gordan and Cui (2016) studied the effects of race on academic achievement in low-. income areas and hypothesized that community poverty has a negative correlation to academic. achievement, black students have a lower rate of academic achievement and the racial gap is.

  20. PDF The Effects of Formative Assessment on Academic Achievement ...

    investigating the effects of educational factors on students' academic achievement. According to the research results, formative assessment was the third most influential factor among 138 factors for students' achievement. In the same order, feedback, which is one of the most significant elements of formative assessment, came in at eighth ...

  21. How Academic and Extracurricular Workload and Stress Impacts the Mental

    Academic workload and extracurricular involvement can be sources of stress for college students. Academic workload is characterized as the student's major, course work and future graduate school and/or career path plans. Extracurricular involvement can pertain from anything to intramural sports to being the President of a student organization.

  22. PDF The effect of athletic participation on the academic achievement of

    athletic participation is positively associated with academic achievement. In his seminal study, Marsh (1988), using a large, national sample, found that athletic participation was favorably related to numerous senior and post-secondary outcomes, including academic achievement and educational aspirations, as well as subsequent college attendance.

  23. How Technology Impacts Student Achievement in The Classroom

    The integration of technology in classrooms has become increasingly prevalent, presenting both opportunities and challenges for educators. This study examines the impact of technology on student performance and behavior, particularly in seventh and eighth-grade classrooms. The COVID-19 pandemic accelerated the shift to online learning, raising concerns about learning loss and disparities in ...

  24. Breakfast impacts student success, but not in the way you might think

    The research also found while breakfast predicted student motivation, it did not predict student achievement. Instead, motivation predicted achievement. "A healthy breakfast has traditionally been associated with improved academic performance, but the motivational factors implicated in this process have not been well understood," Prof ...

  25. Liberal Arts Undergraduate Research Award (LAURA) Reception Celebrates

    The College of Liberal Arts (CLA) at Temple University held its annual Liberal Arts Undergraduate Research Award (LAURA) Reception on April 10th, a celebration of academic excellence and innovation among undergraduate students and their faculty mentors. Deputy Dean Sandra Suarez serves as the Director of the LAURA program, and she is dedicated to its mission to provide students with hands-on ...

  26. Spring 2024 Student Achievement Spotlights

    Spring 2024 Student Achievement Spotlights. Several of our students have been accepted into summer programs or taken jobs that will start in Fall. Here are a few highlights. Geology. Image. Geology scholar Candice De Anda was accepted to the Astronomy and Planetary Science Ph.D. program at Northern Arizona University. She will be working with ...

  27. 2024 Honors & Awards Ceremony

    Mechanical Engineering Outstanding Academic Achievement Awards. ... thesis advising, and professional development and mentoring exhibited by the following faculty in the Department of Mechanical and Aerospace Engineering. This award is selected by the members of the Mechanical Engineering External Advisory Board.

  28. PDF Academic Achievements and Study Habits of College Students of District

    academic achievement - a way in which students function and perform in accordance with the anticipated tasks at hand. However, achievement can be said to be the outcome of instruction. Osokoya (1998) also stated that achievement is the end product of a learning experience. Attaining a high level of academic performance is what

  29. Call for Nominations: 2024 AHS Staff Award of Merit

    The AHS Staff Council developed the AHS Staff Award of Merit to recognize and honor excellence in service to our college by academic professional and support staff employees. The winner of the award will receive a $750. The winner is nominated for the campus-wide UIC Award of Merit program, which comes with a $2,500 cash award.

  30. Students Honored with 2024 Outstanding Student Achievement Awards

    These exceptional students have not only demonstrated academic excellence but have also shown a profound dedication to their respective colleges, communities and peers. We take great pride in announcing this year's Outstanding Student Achievement Award Recipients. College of Arts and Letters Fine Arts: Miren Gabiola Social Sciences: Emma Watts