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44 (2006) 351–373
Gender and motivation
Judith L. Meece *, Beverly Bower Glienke, Samantha Burg
University of North Carolina-CH, United States
Received 28 September 2005; received in revised form 3 April 2006; accepted 3 April 2006
Abstract
The role of gender in shaping achievement motivation has a long history in psychological and
educational research. In this review, gender differences in motivation are examined using four
contemporary theories of achievement motivation, including attribution, expectancy-value, self-
efficacy, and achievement goal perspectives. Across all theories, findings indicate girls’ and boys’
motivation-related beliefs and behaviors continue to follow gender role stereotypes. Boys report
stronger ability and interest beliefs in mathematics and science, whereas girls have more confidence
and interest in language arts and writing. Gender effects are moderated by ability, ethnicity,
socioeconomic status, and classroom context. Additionally, developmental research indicates that
gender differences in motivation are evident early in school, and increase for reading and language
arts over the course of school. The role of the home and school environment in the development of
these gender patterns is examined. Important implications for school professionals are highlighted.
D 2006 Society for the Study of School Psychology. Published by Elsevier Ltd. All rights reserved.
Keywords: Gender; Motivation; Expectancy-value; Attributions; Achievement goals; Self-efficacy
The role of gender in shaping achievement motivation has a long history in
psychological and educational research. Early studies drew on achievement motivation
theories to explain why adult women and men differed in their educational and
occupational pursuits. Prior to the 1970s, men were more likely than women to obtain a
college degree, pursue advanced study, and enter high-paying occupations. Over the last
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ress: [email protected] (J.L. Meece).
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373352
three decades, unprecedented changes in women’s level of educational participation and
occupational status have been observed. For the first time in U.S. history, women are
earning more college degrees than men, and they exceed men in many fields of study
including psychology, accounting, and health-related professions (U.S. Department of
Labor, 2003). The percentage of women earning professional degrees has also increased
substantially in the last 30 years. Among secondary school students, large gender gaps in
mathematics and science performance have decreased, and in some cases, have been
eliminated (National Center of Educational Statistics [NCES], 2004). Additionally, with
the exception of physics, young women today are just as likely as men to take challenging
mathematics and science coursework in high school.
While considerable progress has been made, important gender differences in
educational achievement and occupational attainment remain. More high school girls
today are enrolled in advanced high school mathematics and science classes, but they are
less likely than boys to report liking these courses (NCES, 2004). Also, college women
continue to be underrepresented in some fields of study, such as engineering, computer
and information science, physical science, and chemistry, and women earn less than half
of the professional degrees in business, law, dentistry, and medicine (NCES, 2004).
Additionally, there has been little change in gender gaps for reading and writing over the
last 30 years (NCES, 2000). At all grade levels of the National Assessment of Educational
Progress (NAEP), girls outperform boys (NCES, 2004). When achievement patterns are
examined by socioeconomic status, ethnicity, or geographic location, there are significant
disparities in students’ educational achievement and participation across different groups.
Gender gaps in school performance, favoring girls, are particularly wide for non-white
ethnic minority students (Grant & Rong, 1999). Motivation differences related to these
gendered patterns of school achievement and participation need examination.
This review will examine the role of motivation in explaining gender differences in
academic achievement and attainment. The review will first focus on four theories of
motivation that have been most frequently used in the last 30 years to explain such
differences. The theories include expectancy-value, attribution, self-efficacy, achievement
goal theories. In keeping with the cognitive tradition in motivation research, these theories
stress the importance of competency judgments, value beliefs, and goals. The review ends
with a brief discussion of the role parental, school, and sociocultural influences on the
development of gender differences in motivation.
Early psychological theories of achievement motivation
Early theories of achievement motivation focused on differences in men’s and women’s
motives for success. Achievement motives were viewed as personality dispositions that
were acquired early and remained stable over the life course. McClelland, Atkinson, Clark,
and Lowell (1953) used the Thematic Apperception Test (TAT) to assess achievement
motives in college men and women. This measure depicted men and women in different
ambiguous situations, and participants were asked to provide a description of the picture.
Male students were shown pictures of two men at a machine and a man at a drafting table,
whereas female students were shown pictures of two women in a laboratory and a woman
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373 353
upholstering a chair. The assumption of the TAT was that people would project their own
motives and desires into the picture and stories, and highly success-oriented people would
write stories that included a good deal of achievement imagery. In general, college men of
the time responded to the TAT assessments with more achievement imagery than did their
female counterparts. Accordingly, women were viewed as less success-oriented than men
or as fearful of success. Horner (1975) concluded that bmost women have a motive to
avoid success, that is, a disposition to become anxious about achieving success because
they expect negative consequences such as social rejection and/or feelings of being
unfeminineQ (p. 207). Fear of success, as a psychological barrier to women’s achievement,
generated a good deal of research in the 1970s.
Building on the work of McClelland, Atkinson (1957, 1964) introduced an expectancy-
value model of achievement motivation. In this model, achievement motivation was a
function of motives for success, expectations for success, the incentive value of success,
and the motive to avoid failure. This model went beyond personality dispositions to
include cognitive assessments represented by the person’s subjective expectation for
success at a particular task and for the anticipated outcomes or consequences of an
outcome. Whereas achievement expectancies were defined as subjective probabilities of
success, the incentive value of the task was defined in terms of its perceived difficulty
level. According to Atkinson’s theory, tasks that were more difficult and challenging
would have more incentive value for the individual. Expectancies and values were
inversely related so that highly valued tasks were those for which individuals had low
expectations for success.
Like its predecessor, Atkinson’s expectancy-value theory continued to emphasize
gender differences related to the motives to approach or avoid success. Atkinson’s research
also indicated that men and women differ in their concerns about failure. For example,
based on scores obtained from the Test Anxiety Questionnaire (Mandler & Sarason, 1952),
female respondents, when compared with their male counterparts, scored higher on
measures of test anxiety (Hill & Sarason, 1966; Maccoby & Jacklin, 1974). Finally,
considerable research in the 1960s also documented that girls and women tend to have
lower expectations for success than their male counterparts (Crandall, 1969; Feather, 1966;
Veroff, 1969). Thus, according to the Atkinson expectancy-value theory, gender
differences in motivation were related to motives to approach/avoid success, concerns
about failure, and expectations for success.
By the late 1970s, much of the early research on achievement motives and fears of
success had been refuted due to biases in research methodologies and inconsistent findings
across studies (Frieze, Parsons, Johnson, Ruble, & Zellman, 1978). This research was also
criticized because female achievement was often judged against a male standard that did
not take into account gendered patterns of socialization and education that differentially
shaped men’s and women’s academic and occupational choices (Eccles, 1994).
Attribution theories of motivation
During the 1970s and early 1980s, attribution theory was the predominant theory of
motivation, and it was utilized to understand gender differences in achievement
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373354
motivation. This theory serves as the transition into cognitive perspectives on motivation.
Whereas earlier theories included personality dispositions, such as motives to avoid
success and fear of failure, attribution theories placed a heavy emphasis on the cognitive
processes involved in interpreting success and failure experiences in achievement
situations. Weiner (1985, 1986) stressed that two of the most important causal ascriptions
people make concerning their perceptions of success and failure are ability and effort.
Weiner’s theory also proposed that causal attribution patterns were related in systematic
ways to expectations for success, to subsequent achievement striving, and to the affect
associated with achievement. Causal attributions involving ability or effort have the most
positive effects on achievement affect and behavior. He further proposed that causal
ascriptions affect emotions and expectations for success.
Gender differences in causal attribution patterns
Research using an attribution framework identified gender differences in the ways that
children and adults interpret their successes and failures. Early studies indicated that
women were more likely to exhibit what has been labeled as a low-expectancy attribution
pattern, and their achievement behavior has been found to suffer as a consequence.
Specifically, men attributed their successes to internal stable causes (ability), whereas
women attributed their failures, but not their successes, to these causes (Bar Tal, 1978;
Crandall, Katkowsky, & Crandall, 1965; Frieze, 1975; McMahan, 1973). However, these
patterns were not consistently found across all studies and findings appeared to be more
marked for achievement areas that were sex-typed as masculine or feminine domains
(Frieze, Whitley, Hanusa, & McHugh, 1982). In mathematics, for example, girls are less
likely than boys to attribute their successes to ability. Instead, girls attribute their
successes to effort and hard work, which may undermine their expectations for success as
mathematics increases in difficulty (Eccles et al., 1983; Parsons, Meece, Adler, &
Kaczala, 1982; Wolleat, Pedro, Becker, & Fennema, 1980). Similar differences in causal
attribution patterns have also been noted for successes and failures in science courses
(Kahle & Meece, 1994; Li & Adamson, 1995). By contrast, few studies report gender
differences for achievement tasks involving verbal and language abilities (Parsons, Adler,
& Meece, 1984). Thus, gender differences in causal attribution patterns are evident but
depend on the achievement domain. Studies also suggest that results vary depending on
student ability level and research methodology, such as open-ended versus rank-order
questions (Parsons, Adler, & Kaczala, 1982; Parsons, Kaczala, & Meece, 1982; Parsons,
Meece, et al., 1982).
Causal attributions and learned helplessness
Another prominent area of attribution research is the study of learned helplessness.
Learned helplessness occurs when someone attributes failure to a lack of ability and gives
up easily or shows a steady regression in problem-solving strategies when confronted with
failure. Diener and Dweck (1978) reported that learned helpless children underestimated
their performances, discounted their successes, and believed others performed better than
they did. In contrast, children who do not experience learned helplessness continued to
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373 355
perform a task after experiencing failure because they attributed failure to a lack of effort
or task difficulty (Diener & Dweck, 1978; Dweck, 1986; Dweck & Reppucci, 1973).
Due to gender differences in attribution patterns, girls may be more prone to learned
helplessness than boys, particularly with regards to mathematics and other male sex-typed
domains (Dweck, 1986; Eccles et al., 1983; Farmer & Vispoel, 1990). Studies of children’s
attribution patterns in laboratory settings have identified gender differences in causal
attribution and behavior patterns that are consistent with learned helplessness (Dweck &
Bush, 1976). However, as with studies of causal attributions, findings are not consistent
across studies. For example, Parsons (Eccles), Meece, et al. (1982) used school-related
learning tasks (number sequences and anagrams) to examine gender differences in learned
helplessness patterns within a sample of adolescents (Grades 8–10). Although male and
female students reported differential attributions to ability for successes and failures on the
math problems, these causal attribution patterns did not translate into gender differences in
behavioral responses (see also Kloosterman, 1990). That is, no differences were noted in
persistence, expectancy judgments, or error rates for either math or anagram problems. In
fact, girls persisted longer than boys on the math tasks when they experienced failure.
Thus, attribution measures, rather behavioral responses to failure, tend to provide the
strongest support for gender differences in learned helplessness. As discussed earlier,
responses on attribution measures are influenced by many situational factors, including
sex-role stereotypes and self-presentational concerns (Parsons, Adler, et al., 1982; Parsons
et al., 1984; Parsons, Kaczala, et al., 1982; Parsons, Meece, et al., 1982; Farmer & Vispoel,
1990; Frieze et al., 1982; McHugh, Frieze, & Hanusa, 1982).
Summary
Considerable research has focused on gender differences in causal attribution patterns,
with much of this research directed toward understanding the low expectancy patterns,
achievement anxiety, and learned helplessness inhibiting female achievement. To date,
research on gender differences in causal attributions and learned helplessness is
inconclusive and equivocal. Patterns of gender differences depend on methodology used,
academic domain, academic abilities, type of achievement task, and research setting
(laboratory versus classroom). Additionally, when gender differences are found, they tend
to be small in magnitude and not a strong predictor of behavioral responses (Eccles et al.,
1983; Parsons, Adler, et al., 1982; Parsons et al., 1984; Parsons, Kaczala, et al., 1982;
Parsons, Meece, et al., 1982).
Contemporary expectancy-value theories
As discussed previously, expectancy-value theories have been widely used to examine
gender differences in motivation and achievement behavior. Building on the prior research
of Atkinson (1957) and Weiner (1985, 1986), Eccles et al. (1983) introduced a social
cognitive model of academic choice that included a socialization component focused on
the role of culture, parents, and teachers in shaping achievement-related beliefs, as well as
identity development processes. The Eccles et al. (1983) model has been applied to
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373356
different achievement domains (mathematics, science, and sports), as well as career
choices and trajectories of young adults. In keeping with Atkinson, Eccles et al’s model
highlights the importance of expectancy and value beliefs. Each will be briefly described
below.
Competency beliefs
Competency beliefs are defined as estimations of one’s ability to perform or to succeed
at an activity (Eccles et al., 1983). Research with children, adolescents, and adults has
shown that competency beliefs have a particularly strong relation to academic performance
(Eccles et al., 1983; Parsons et al., 1984; Wigfield & Eccles, 1995). Over the past few
decades, much has been learned about children’s competency beliefs and the gender
differences associated with these perceptions. For example, as early as first grade, children
make distinct judgments about their abilities in different domains, including mathematics,
reading, music, and sports (Eccles, Wigfield, Harold, & Blumenfeld, 1993). Also, small
gender differences in children’s competency beliefs also emerge in early elementary school
(Eccles et al., 1993). Interestingly, the results follow gender norms and stereotypes with
boys holding more positive competence beliefs for sports and mathematics than girls and
with girls holding more positive competence beliefs for instrumental music than boys
(Eccles et al., 1993). These gender differences emerge even though boys and girls perform
equally well in these domains (Eccles et al., 1993).
Additionally, cross-sectional and longitudinal research indicates that all children
experience declines in their competency beliefs over the course of schooling (Wigfield &
Eccles, 2000; Wigfield, Eccles, Yoon, & Harold, 1997). However, the rate of change
differs by gender and by achievement domain. Girls’ perceptions of their math abilities
decline at a slower rate than boys, such that gender gaps in mathematic competence
decrease over time (Fredricks & Eccles, 2002; Jacobs, Lanza, Osgood, Eccles, & Wigfield,
2002). For language arts, boys and girls begin elementary school with similar ability
perceptions, but boys’ perceptions rapidly decline in elementary school. By middle school,
there are significant differences in boys’ and girls’ competency ratings for language arts.
Like mathematics, gender gaps in language arts are somewhat smaller by high school
(Jacobs et al., 2002). By contrast, gender differences in the sports domain, favoring boys,
remain stable across all grades of school (Fredricks & Eccles, 2002; Jacobs et al., 2002).
Value beliefs
In Eccles et al.’s (1983) expectancy-value model, the influence of competency
perceptions are moderated by the value attached to achievement activities. Task value is
defined in terms of four components: (1) perceived importance of being good at an
activity; (2) perceived usefulness of the activity for obtaining short- or long-term goals; (3)
perceived interest or liking of the activity; and (4) perceived cost of engaging in the
activity (e.g., time taken away from other activities, amount of effort needed to succeed,
performance anxiety associated with the activity, etc.). Developmental studies have shown
that both children and adolescents are able to distinguish between competency and value
beliefs. That is, they are able to separate what activities they are good at and what activities
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373 357
they value (Eccles et al., 1993). By fifth grade, children are also able to differentiate what
activities may not hold much interest for them but are necessary to achieving a short- or
long-term goal (Eccles et al., 1993). Additionally, research has shown that the subjective
value of activities influence course enrollment patterns and participation rates. For
example, the value adolescents attach to mathematics predicts their decision to enroll in
optional mathematics courses (Feather, 1988; Meece, Wigfield, & Eccles, 1990; Parsons et
al., 1984). Similarly, the value attached to sports predicts participation in athletic activities
(Eccles & Harold, 1991).
Beginning with elementary school, gender differences are evident in the value children
and adolescents attach to different academic domains. As with competency beliefs, the
patterns follow gender norms and stereotypes. In a longitudinal study of first- through
fourth-grade students, Eccles et al. (1993) defined task value as a composite score
representing the perceived interest, enjoyment, importance, and usefulness of an academic
domain. The results showed that boys placed a higher value on sports activities than girls,
whereas girls placed a higher value than boys on musical and reading activities.
Interestingly, there were no gender differences in the value attached to mathematics for
elementary school children.
Studies with older children and adolescents also reveal similar patterns of gender
differences in achievement task values. For example, Wigfield, Eccles, Mac Iver, and
Rueman (1991) reported that students’ perceptions of the value of mathematics, reading,
and sports declined at the transition to junior high school (Grade 7). As with younger
students, girls placed a greater value on English than did boys; whereas boys placed
greater value than girls on sports. Expanding this research, Jacobs et al. (2002) used
growth modeling procedures to examine changes in students’ value perceptions from the
first through the twelfth grade in three achievement domains. Over the course of
schooling, students’ value perceptions related to mathematics, language arts, and sports all
declined, with the value of language arts declining most rapidly in elementary school and
the value of mathematics declining most rapidly in high school. As expected, an
examination of gender patterns revealed that boys placed a higher value on sports activities
than girls, while the reverse was found for language arts. Similar to Eccles et al. (1993), no
gender differences were found for the valuing of mathematics, nor differences in the rate of
change (see also Fedricks & Eccles, 2002). With respect to language arts, girls showed a
more rapid decline in their value perceptions during elementary school than boys, but this
direction reversed by the high school years (Jacobs et al., 2002).
Summary
Research based on Eccles et al.’s (1983) expanded expectancy-value model of
achievement behavior has provided many important insights into gender differences in
motivation. This research has revealed that boys and girls begin school with different
views of their abilities and interests (Eccles et al., 1993; Jacobs et al., 2002). Boys begin
school with higher perceptions of their math abilities, whereas girls report higher
perceptions of their language arts abilities. Gender gaps in these perceptions narrow for
mathematics and increase for language arts over the course of schooling. When task values
are defined as interest and importance, there appear to be no gender differences regarding
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373358
the value of mathematics; however, gender differences are evident in students’ valuing of
language arts across the school years. Whereas previous research had suggested that
gender differences would increase at the transition to adolescence or to new school
environments (Wigfield et al., 1991), recent analyses using growth modeling procedures
indicate that the most rapid period of decline in both competency and value perceptions
occurs in the elementary school years (Jacobs et al., 2002). There is also evidence to
suggest the negative changes in competency perceptions are related to declines in
achievement values over time (Jacobs et al., 2002). Thus efforts to improve motivation
need to target students’ competency beliefs, as well as valuing of academic domains,
during the elementary school years and beyond.
Are gender differences in students’ competency and value beliefs related to
achievement behavior? Numerous studies have shown that children’s and adolescents’
competence beliefs are important predictors of their performance in different domains,
even when the level of previous performance is controlled. In contrast, value perceptions
are a stronger predictor of students’ choice to participate or engage in an activity. Further,
relations for competency and value perceptions are found as early as first grade and the
strength of these relations increase with age (Eccles, 1994; Eccles et al., 1983; Parsons et
al., 1984; Wigfield & Eccles, 1992). Thus, if gender differences are evident in students’
competency and value perceptions, these differences are likely to have an impact on their
activity choices, engagement, and performance.
Self-efficacy theory
Since its introduction almost 30 years ago (Bandura, 1977), the construct of self-
efficacy has received increasing attention in educational research and the studies of
academic motivation and self-regulated learning. Self-efficacy refers to a person’s
judgment of their confidence to learn, perform academic tasks or succeed in academic
endeavors (Bandura, 1986). Unlike more global beliefs such as self-concept, self-
confidence and locus of control, self-efficacy involves judgments concerning one’s ability
to attain a certain level of performance in a particular activity or situation (Meece et al.,
1990; Schunk, 1989). For example, respondents are asked to rate their level of confidence
for solving a certain number of mathematics problems correctly, for obtaining a certain
grade in a course, for comprehending reading passages of different levels of difficulty, or
for learning technical terms in biology (Pajares, 1996). Research has consistently shown
that self-efficacy beliefs are important mediators of all types of achievement-related
behaviors, such as effort and task persistence, self-regulatory strategies, course enrollment,
and career choices (Bong & Skaalvik, 2003; Pajares, 1996; Pintrich & Schunk, 2002;
Schunk & Pajares, 2002). Self-efficacy theory has also been applied to the career
development of women (Betz & Hackett, 1987).
Gender differences in self-efficacy beliefs
Self-efficacy theory has been widely used to understand gender differences in motivation
and achievement patterns. Much of this research has focused on academic areas that are
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373 359
traditionally sex-typed as male or female domains of achievement. For example, numerous
studies document that boys tend to report higher self-efficacy and expectancy beliefs than
girls about their performance in math and science (Anderman & Young, 1994; Pajares,
1996; Pintrich & DeGroot, 1990; Zimmerman & Martinez Pons, 1990). The results of
Whitley’s (1997) meta-analysis of studies of gender differences in computer-related
attitudes and behavior also revealed a similar pattern as men and boys exhibited higher
computer self-efficacy than did their female counterparts. When the context were reading or
writing, however, gender differences were reversed. For example, Pajares and Valiante
(1997, 2001) reported that middle school girls had higher writing self-efficacy than boys,
even though there were no gender differences in actual writing performance.
Research also suggests that gender differences in self-efficacy are linked to age or grade
level (Schunk & Pajares, 2002), with differences beginning to emerge in the middle school
years (Bandura, Barbaranelli, Caprara, & Pastorelli, 2001; Wigfield, Eccles, & Pintrich,
1996). In Whitley’s (1997) meta-analysis of computer self-efficacy, mean effect sizes for
gender differences varied depending on the age of the sample: .09 for grammar school
(elementary and middle school/junior high), .66 for high school, .32 for college, and .49
for adult samples. Age-related gender differences in self-efficacy beliefs are generally
attributed to increased concerns about conforming to gender-role stereotypes, which
typically coincide with the entry into adolescence (Wigfield et al., 1996). However,
research on gender differences in self-efficacy beliefs have not found a consistent pattern
of gender differences among young adolescents (Pajares & Graham, 1999; Roeser,
Midgley, & Urdan, 1996).
Summary
A large body of research has examined gender differences in self-efficacy beliefs. This
research is guided by Bandura’s social cognitive theory (Bandura, 1986), which emphasizes
the critical role of efficacy beliefs in human development and behavior. Compared to studies
of academic competency beliefs, research on efficacy beliefs present a more mixed pattern
of results. One explanation for this discrepancy is the task specificity of efficacy beliefs.
Gender differences may be more prevalent in measures that elicit group comparisons or
evaluation of worth (e.g., bI am good at science.Q). In making these assessments, cultural
stereotypes or gender expectations may lead to more biased assessments (Schunk &Meece,
2006). In fact, when gender role orientations are taken into account, gender differences in
efficacy beliefs are no longer significant (Pajares & Valiante, 2001). Nevertheless self-
efficacy has been positively correlated with higher levels of academic achievement and
participation across studies of different age levels (Schunk & Pajares, 2002). Given its
positive influence on achievement and motivation, better understanding of gender and age-
related differences in the development of self-efficacy beliefs is needed.
Goal theories of achievement motivation
Achievement goal theory emphasizes the person’s reasons for choosing, performing,
and persisting at various learning activities. As noted in this issue (Gilman & Anderman,
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373360
2006) and elsewhere (Ames, 1992; Dweck & Elliot, 1983; Nicholls, 1984), two types of
goal orientations have been used to understand and to explain academic behaviors in
school settings. Each goal type differs in terms of the standards used to judge performance
and achievement. A learning or mastery goal orientation is defined as a desire to develop
one’s competencies, to master a task, or to improve intellectually, whereas a performance
goal orientation is concerned with demonstrating high ability relative to others, competing
for grades, or gaining recognition for ability. In recent years, performance goals have been
further differentiated into performance-approach goals, which focus on the attainment of
favorable judgments of competence, and performance-avoidance goals, which focus on
avoiding unfavorable judgments of ability (Elliot & Church, 1997; Elliot & Harackiewicz,
1996).
The goals individuals adopt in learning settings have important implications for a wide
range of academic behaviors. In general, a mastery focus is positively related to a
preference for challenging activities (Ames & Archer, 1988), to high levels of interest, task
involvement, and persistence (Elliot & Dweck, 1988; Harackiewicz, Barron, Pintrich,
Elliot, & Thrash, 2002; Stipek & Kowalski, 1989), and to reported use of learning
strategies that enhance conceptual understanding and recall of information (Ames &
Archer, 1988; Meece, Blumenfeld, & Hoyle, 1988; Meece & Miller, 2001; Nolen, 1988).
In contrast, performance-oriented goals tend to be associated with surface-level learning
strategies (Graham & Golan, 1991; Meece et al., 1988; Nolen, 1988; Stipek & Gralinski,
1996), self-handicapping strategies (Urdan, Midgley, & Anderman, 1998), and academic
cheating (Anderman, Griesinger, & Westerfield, 1998). However, some evidence suggests
that performance-approach goals may be positively related with achievement outcomes,
especially for college students (Harackiewicz et al., 2002).
Gender differences in achievement goal orientations
Compared with the other achievement theories discussed in this article, only a few
studies have examined gender differences in achievement goal orientations. In a study of
motivation and strategy use in elementary science, Anderman and Young (1994) reported
that girls were more learning focused and less ability focused in science than were boys,
even though girls reported lower levels of self-efficacy in science. In another study, Meece
and Jones (1996) reported gender differences, favoring boys, in elementary school
students’ science-related efficacy beliefs; however no main effects for gender were
reported for mastery and performance goal scales. Gender effects were also moderated by
the students’ ability level. In the low ability group only, boys reported a stronger mastery
goal orientation than did girls. In a third study based on a sample of ethnically and
economically missed sixth-grade students, Middleton and Midgley (1997) found that
African American girls reported a stronger learning goal orientation than African
American boys. No differences in goal orientations were found for European American
students. In contrast to these findings, Greene and her colleagues (Greene, DeBacker,
Ravindran, & Knows, 1999) reported no gender differences in high school students’
learning and performance goals in mathematics. Taken together, these studies reveal no
clear pattern of gender differences in students’ achievement goal orientations. Differences
are moderated by ability, race, and classroom context.
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373 361
Sources of gender differences in motivation
Socialization and achievement experiences play an important role in the development
of gender differences in motivation. Because gender differences are found so early in
development, the child home environment plays an important role in the shaping of their
competency beliefs and interests. At school, children have an opportunity to validate,
refine, and enact their gender beliefs and behavior. According to the Eccles et al. (1983)
model, both parents and teachers contribute to gender differences in motivation by (a)
modeling sex-typed behavior, (b) communicating different expectations and goals for boys
and girls, and (c) encouraging different activities and skills. This section briefly reviews
research on parental and school influences. In addition, other cultural influences on
gendered patterns of motivation will be reviewed.
Parental influences
The Eccles et al. (1983) expanded expectancy-value model included a parental
socialization component. According to this model, there are several important pathways
by which parents influence their children’s achievement motivation. Parents are important
sources of information children draw on to form their ability and value perceptions.
Parents also provide and encourage different recreational and learning activities that can
support the development of specific skills and interests. Additionally, parents are
important role models. They communicate information about their own abilities and
skills, and what is valued and important, through their choice of work and leisure
activities. With respect to gender differences in motivation, there is strong empirical
support for the parental socialization component of the expectancy-value model (Eccles et
al., 1983; Jacobs, 1991; Jacobs & Bleeker, 2004; Jacobs & Eccles, 1992; Jacobs, Davis-
Kean, Bleeker, Eccles, & Malanchuk, 2005; Parsons, Adler, et al., 1982; Parsons, Kaczala,
et al., 1982; Parsons, Meece, et al., 1982). Relevant findings are briefly summarized
below.
Parental beliefs about their children’s abilities have a strong influence on their
children’s own beliefs about their academic abilities (Bleeker & Jacobs, 2004; Eccles,
Wigfield, & Schiefele, 1998; Jacobs, 1991; Jacobs & Eccles, 1992). Research has shown
that cultural stereotypes (e.g., men excel in mathematics and science) influence parents’
perceptions of their children’s abilities, leading parents to form different perceptions of
their sons’ and daughters’ academic abilities. For example, Parsons, Adler, et al. (1982)
reported that parents, particularly fathers, thought that their daughters needed to work
harder than their sons to do well in mathematics despite no differences in their children’s
mathematics achievement. In a separate study, Jacobs (1991) found that parents who
held gender stereotypes about men’s superior mathematical abilities reported less
confidence in their children’s mathematics abilities if they had daughters but more
confidence if they had sons. Research has also shown that both mother’s and fathers’
perceptions of their children’s abilities influence how children perceived their own
abilities, even after controlling for differences in children’s achievement (Jacobs &
Eccles, 1992). Similar patterns are found for children’s interests in mathematics and
science (Jacobs et al., 2005).
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373362
Parental involvement in children’s activities has also been found to differentially affect
girl’s and boy’s choice of activities. For example, in a study of single-parent families, the
amount of time mothers engaged in supportive activities with their children was
positively related to their children’s productive leisure activity during adolescence
(Larson, Dworkin, & Gillman, 2001). Researchers have also found significant links
between parents’ gender stereotypes, children’s gender stereotypes, and children’s activity
choice. In a 2-year study of middle class girls and their parents, McHale, Shanahan,
Updegraff, Crouter, and Booth (2004) investigated the amount of time girls spent in sex-
typed leisure activities during middle childhood and adolescence. The researchers found
that the more sex-typed beliefs parents and girls held, the more the girls were involved in
sex-typed activities. Interestingly, while the parents’ personality qualities (e.g., kindness
and competitiveness) were strong predictors of girls’ sex-typed activity, parental gender
role attitudes were not. In addition, the mothers’ personality qualities best predicted the
sex-typed activities in middle childhood, while the fathers’ qualities best predicted sex-
typed activities in adolescence. This latter finding suggests that the paternal role ties
children to the outside world and becomes more important as the children age (McHale et
al., 2004).
Combining the above areas of research, Bleeker and Jacobs (2004) examined ways
parents promote positive attitudes and behaviors toward mathematics and science in their
children. Their study examined information on (a) parental selection of math- or science-
related toys, games, books and other activities, (b) parental involvement and participation
in mathematics and science activities, and (c) parental perceptions of their children’s math
and science abilities. Parents’ promotive activities were found to be dependent on the
gender of both the child and the parent and were connected to children’s later involvement
in mathematics and science activities. More specifically, mothers were more likely to
purchase mathematics and science items for boys than for girls, regardless of grade level;
and 6 years later, analyses revealed an increase in children’s mathematics and science
interests related to the number of purchases made (Bleeker & Jacobs, 2004). However,
both mothers and fathers were more likely to be involved in their daughters’ mathematics
and science activities than in those of their sons. This finding suggests that parents may
think their daughters need more assistance with mathematics and science, and unsolicited
help can be deleterious to girls’ self-perceptions (Graham, 1990).
Parental influence not only affects children’s choice of activities and achievement
beliefs but also impacts children’s career interests and choices. Recent studies indicate that
gender differences in mathematics and science course selection at the high school level
have decreased since the 1980s (Coley, 2001). Despite this trend, occupation statistics
continue to show gender differences in career choices, with men constituting the majority
in science- and mathematics-related jobs (U.S. Census Bureau, 2003). Research has shown
that parental beliefs and expectations can affect children’s occupational choices. In one
study, mother’s beliefs about their children’s abilities in mathematics in Grade 7 were
related to adolescents’ math and science career efficacy 12 years later (Bleeker & Jacobs,
2004). Another study revealed that parental expectations for their children at age 17
predicted their son’s and daughters’ career choices at age 28 (Jacobs, Chhin, & Bleeker, in
press). Thus, parental behaviors, beliefs, and expectations appear to have an enduring
influence on young people’s achievement attitudes and behaviors.
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373 363
Schooling influences
Schools also play a key role in shaping children’s gender role conceptions, beliefs, and
social identities. At school, children observe and learn about the adult world, and the adult
images to which they are exposed may be more rigid and more polarized than those found
in the larger society (Ruble & Martin, 1998). For example, women are more likely to
perform traditional gender roles such as caring for young children, putting on Band-Aids,
and preparing food, whereas men are more likely to manage the school and staff. Gender
differences are also evident in staffing patterns at school. A majority of high school foreign
language, humanities, business education, and English teachers are female, whereas only
half the science teachers are female (Weiss, Banilower, McMahon, & Smith, 2001).
Students also learn important gender role lessons from textbooks, videotapes, and
computer software at school. Although textbooks are less gender biased than they were 30
years ago, male characters continue to outnumber female ones in basal readers, and
representations of men have remained more stereotyped than those of women (Fleming,
2000).
Considerable research also has examined gender differences in teachers’ perceptions of
their students’ abilities. Early studies suggested that teachers have higher achievement
expectations for boys than for girls, especially in male sex-typed activities (for review, see
Meece et al., 1982). However, subsequent studies of teacher expectations are mixed and
equivocal (Dusek & Joseph, 1983; Jussim & Harber, 2005). When gender differences in
ability perceptions or achievement expectations are found, they typically reflect actual
differences in performance rather than a teacher bias toward one gender or the other
(Jussim & Harber, 2005). The one exception to this pattern is the tendency of teachers to
overestimate girls’ effort in mathematics, which may lead girls to attribute their successes
more to effort than to ability (Madon et al., 1998). It is important to point out that detailed
analyses of teacher expectancy effects have focused primarily on mathematics. Additional
research is needed to examine how teacher expectations and perceptions may contribute to
gender differences in students’ perceptions of their abilities in other academic areas such
as reading and science.
A related area of research focuses on gender differences in classroom interaction
patterns. Research suggests that teachers tend to be more supportive and warmer
toward students for whom they hold high expectations. As a result, these students
receive a disproportionately high number of opportunities to demonstrate mastery and
to receive positive feedback in their abilities (Brophy & Good, 1974). The Brophy–
Good Dyadic Child Interaction System (Brophy & Good, 1974) has been widely used
to identify gendered differentiated patterns of classroom interactions. The system
records teacher-interacted questions (direct questions, open questions, and call-outs),
teacher-initiated feedback (criticism, praise, and neutral comments), student-initiated
interactions (student questions, volunteering, spontaneous comments, etc.), and teacher-
initiated interactions focused on behavioral management. Studies utilizing the Brophy–
Good system have consistently documented that boys tend to have more interactions of
all types than do girls (Altermann, Jovanic, & Perry, 1998; Jones & Dindia, 2004;
Meece, 1987; Parsons, Kaczala et al., 1982). Results show that boys are called on
more than girls to answer process, abstract, and complex questions, at both the
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373364
elementary and secondary levels. Further, compared with girls, boys also receive more
acknowledgement, approval, encouragement, criticism, and corrective feedback in
response to their answers. There gender differences in classroom interaction patterns
communicate different learning expectations for boys and girls (Brophy & Good,
1974).
Gender-differentiated classroom interaction patterns appear to be more pronounced in
stereotypically male sex-typed school subjects, such as mathematics and science, although
these patterns are not consistently found across studies (Altermann et al., 1998; Jones &
Dindia, 2004; Kahle & Meece, 1994; Parsons, Kaczala et al., 1982). Gender differences in
classroom interactions are also moderated by children’s ability levels and by classroom
structures (Parsons, Kaczala et al., 1982). For example, gender differences in interaction
patterns are more pronounced in classrooms where whole-group instruction is the primary
mode of instruction. Furthermore, evidence suggests gender differences in classroom
interactions may be due to the fact that boys initiate more interactions with their teachers
than do girls (Altermann et al., 1998; Eccles & Blumenfeld, 1985). Whether or not these
teacher–student interactions reflect teacher responsivity, the patterns serve to reinforce
gender role stereotypes of male authority and competence.
Less is known about what role specific instructional and management practices may
play in the development of gender differences in motivation. Eccles and Midgley (1989)
maintain that children are maximally motivated to learn when classroom situations fit
well with their needs, interests, and skill levels. In this regard, evidence suggests that the
learning environment of elementary classrooms may favor girls more than boys (Kedar-
Voivodas, 1983). For example, some researchers have speculated that curriculum
activities and materials, particularly in literacy, tend to be better aligned with the
learning interests and preferences of girls than those of boys (Brozo, 2002; Connell,
1996). Other evidence suggests that elementary school teachers tend to have more
favorable attitudes and expectations for students who are cooperative, conforming,
respectful, and orderly. Children who are assertive, independent, and difficult to manage
are the least preferred by teachers (Brophy & Good, 1974; Feshbach, 1969). Given the
nature of gender role socialization, girls are more likely than boys to exhibit the types of
behaviors that enable them to adjust well to the elementary school environment (Kedar-
Voivodas, 1983).
By the secondary school years, instructional activities and practices may have a
different impact. Considerable research has demonstrated the negative influence of school
transitions on adolescents. This research has shown that as students move from elementary
school to middle/junior high schools, learning environments become more impersonal,
structured, and teacher-controlled (Eccles & Midgley, 1989). As they make the transition
to middle school, adolescents also perceive their classrooms as more focused on
competition and ability differences (Anderman & Midgley, 1997; Urdan & Midgley,
2003). While these classroom environments can undermine the motivation of most
students, there is some evidence to suggest that girls respond more negatively to
competitive teaching conditions. For example, Tobin and Garnett (1987) report that whole-
class lessons in science tend to be dominated by high-achieving boys. Other research
suggests that girls initiate more interactions with teachers and report higher achievement
expectations for mathematics in classes where individualized or cooperative learning is the
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373 365
primary mode of instruction (Kahle, 1990; Parsons, Kaczala et al., 1982). Because
secondary teachers tend to use whole-class lecture and discussion as the primary mode
of instruction, boys are more likely than girls to take an active role in those
classrooms. Additional research is needed to examine the role of different instructional
practices in the development of gender differences in motivation during the secondary
school years.
Sociocultural influences
Identity processes play a central role in the development of motivation. According to
Erikson (1963), a key aspect of identity development is to integrate self-conceptions with
societal expectations and opportunities. Children begin to form gender role conceptions
that influence their beliefs, attitudes, and behavior well before they enter school. By the
preschool years, they prefer to engage in activities that are sex-typed as appropriate for
their gender and react negatively to cross-gender behaviors (Ruble & Martin, 1998). As
described earlier, gender stereotypes can permeate almost every aspect of children’s daily
experiences from activities in the home to staffing patterns at school. Eccles et al. (1983)
have argued that socialization processes that lead children to internalize and accept these
gender stereotypes are largely responsible for gender differences in motivation and
achievement. However, the influence of gender stereotypes is moderated by the child’s
own sex-role identity. A masculine orientation is positively associated with self-
perceptions of mathematics competence for both boys and girls (Eccles et al., 1983).
Similarly, Pajares and Valiante (2001) have concluded that gender differences in writing
motivation and achievement of middle school students may be more ba function of gender
orientation rather than genderQ (p. 376).Despite the increasing cultural diversity of the school-aged population, little research
has examined how gender differences in motivation differ by ethnicity, race, or
socioeconomic status (Meece & Kurtz-Costes, 2001). Most studies compare girls and
boys as if they represented homogeneous groups, and few studies have examined how
race, socioeconomic status, and other cultural influences combine with gender to shape
students’ social identities and learning experiences at school. Yet there are several reasons
to expect gender differences to vary across ethnic or socioeconomic groups. First, research
indicates that gender socialization patterns are quite different for Hispanic, Asian, and
African American youth. For example, parents of Latina and Asian girls generally expect
their daughters to be obedient, responsible, dependent, and submissive, whereas African
American girls are socialized to be self-reliant, resourceful and assertive (Collins, 1998;
Weiler, 2000). The socialization experiences of Latina and Asian girls are more consistent
with the gendered expectations at school, and those girls may assimilate into school
environments more easily than their African American peers. Along with gendered
expectations, African American and Latina youth must also cope with stereotypes of their
intellectual inferiority and ethnic discrimination (Spencer, Swanson, & Cunningham,
1991; Steele, 1992). Considerable research has also documented the processes that lead
ethnic minority youth to bdisengageQ from school environments that devalue their own
cultural or racial heritage (Fordham & Ogbu, 1986; Spencer et al., 1991). Moreover, non-
white ethnic minority boys experience more academic and discipline problems than their
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373366
female counterparts at school, which can lead to gender differences in self-perceptions of
abilities and valuing of school success.
Much of the available evidence on gender differences within ethnic groups is quite
mixed. Some studies report gender differences favoring girls among high ability African
American adolescents (Kirst, 1993), while other studies report no gender differences
(Alexander & Entwisle, 1988; Pollard, 1993). In a large-scale study using data from the
National Educational Longitudinal Study of 1988 (NELS:88), Catsambis (1994) reported
gender differences favoring eighth- and tenth-grade boys across African American, Latino,
and White samples. Specifically, girls reported less interest in pursuing mathematics and
science careers, lower participation in math- and science-related extracurricular activities,
and less confidence in their mathematical abilities than did their male counterparts.
However, a larger proportion of African American and Latina girls than boys reported
btrying hard in their mathematics classes.Q Gender differences in math-related motivation
were the largest among Latino students and the smallest among African Americans.
Gender differences for African American adolescents disappeared when differences in
background characteristics (SES, prior achievement, amount of homework completion)
were controlled.
A different gender pattern emerges when the focus is value beliefs. Graham, Taylor, and
Hudley (1998) reported more devaluing of academic achievement for African American
boys than for girls of the same ethnic background. Further, African American girls
nominated other girls of the same ethnicity and high achievers as the most respected and
admired. Boys showed the same pattern when asked to nominate girls for the most
admired and respected category. However, when nominating other males, African
American boys selected low-achieving males as the most respected and admired. Overall,
study results suggested a devaluing of academic achievement among African American
and Latino males (Graham & Taylor, 2002).
A persistent call has been echoed for more research on sociocultural influences on
motivation (Graham, 1994; Meece & Kurtz-Costes, 2001; Pintrich & Zusho, 2002). It is
important to understand how boys and girls within different ethnic or socioeconomic
groups construct their identities as learners in the context of gender and cultural
expectations and norms. Future research should also examine how variations in
socialization experiences in the home and school influence motivation and achievement
patterns for boys and girls in ethnically diverse samples. One challenge for future research
is to sort out the confounding influence of socioeconomic status as well as geographic
location. Few studies have examined the motivation of African American and Latino
samples from rural communities.
Conclusions
Although there has been a recent decline in the gender gap in many achievement
domains, it is clear that gender differences in achievement motivation still exist. Grounded
in expectancy-value, attribution, self-efficacy, and achievement goal theories, today’s
motivation research uses improved methodologies to highlight specific areas where there
are discrepancies between boys’ and girls’ achievement-related beliefs and values.
J.L. Meece et al. / Journal of School Psychology 44 (2006) 351–373 367
Whereas early theories of motivation depicted women as underachievers, current research
indicates that gender differences in causal attributions as well as in competency, value, and
self-efficacy beliefs are domain-specific. In general, boys tend to have positive
achievement-related beliefs in the areas of mathematics, science, and sports while girls
report show more favorable motivation patterns in language arts and reading. The gender
gap in motivation related to mathematics and science tends to narrow with age, whereas
differences in motivation related to language arts remains prominent throughout the school
years. For these reasons, future research should pursue domain- or task-specific studies
that try to understand children’s motivation beliefs and behaviors at several different time
intervals during their lives.
This review also emphasized the important role that the home and school environment
play in shaping gendered patterns of motivation. Because children enter school with sex-
typed views of their interests and abilities, the home environment clearly plays a critical
role in this developmental process. Schools also impact children’s gender role conceptions,
beliefs, and social identities as children observe and imitate traditional gender roles and
encounter gender stereotypes in their classrooms.
This review also documented the lack of research examining gender differences
within ethnic and socioeconomic groups. As the school population becomes more and
more ethnically diverse, research on within-group gender differences is critical for
understanding the motivation and achievement patterns of all students. The challenge for
research is to conduct studies that reflect the unique contributions of social class and
community.
The research discussed in this review has important implications for school
professionals. First, it is important to recognize that gender differences in some
subject areas (e.g., mathematics) have been inflated by popular media (Hyde, 2005).
By reinforcing gender stereotypes and neglecting male areas of underachievement, the
focus on gender inequities in mathematics has resulted in negative consequences for
both boys and girls. However, gender differences in students’ conceptions of their
reading and athletic abilities emerge early and persist over the school years. School
instructional and extracurricular activities may play an important role in reinforcing
these patterns. Also, there is still much that can be done to change the feminine
image of reading and writing and the masculine image of science and school
athletics. Researchers have emphasized the important role that context plays in
reinforcing, strengthening, or diminishing gender differences (Deaux & Major, 1987).
Moreover, it is critically important to examine the schooling processes that lead a
high proportion of non-white ethnic minority and low income students of both
genders to lose confidence in their academic abilities and to devalue the importance
of education for their futures.
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