Thursday, January 14, 2021

Most women do not want a career in STEM and nor do most men; why should the small fraction of women who do want such a career be the same size as the small fraction of men?

Men, women and STEM: Why the differences and what should be done? Steve Stewart-Williams, Lewis G Halsey. European Journal of Personality, January 13, 2021. https://doi.org/10.1177/0890207020962326

Abstract: It is a well-known and widely lamented fact that men outnumber women in a number of fields in STEM (science, technology, engineering and maths). The most commonly discussed explanations for the gender gaps are discrimination and socialization, and the most common policy prescriptions target those ostensible causes. However, a great deal of evidence in the behavioural sciences suggests that discrimination and socialization are only part of the story. The purpose of this paper is to highlight other aspects of the story: aspects that are commonly overlooked or downplayed. More precisely, the paper has two main aims. The first is to examine the evidence that factors other than workplace discrimination contribute to the gender gaps in STEM. These include relatively large average sex differences in career and lifestyle preferences, and relatively small average differences in cognitive aptitudes – some favouring males, others favouring females – which are associated with progressively larger differences the further above the average one looks. The second aim is to examine the evidence suggesting that these sex differences are not purely a product of social factors but also have a substantial biological (i.e. inherited) component. A more complete picture of the causes of the unequal sex ratios in STEM may productively inform policy discussions.

Keywords: discrimination, equality, gender, sex differences, STEM

Having looked at how our analysis of STEM gender gaps might inform the conversation about policy options, we should step back and ask another, more fundamental question: what should the ultimate goal of these policies be? Should we strive for a 50:50 sex ratio in every area where men currently dominate? Or should we strive instead simply to eliminate bias and equalize people’s opportunities, then let the cards fall where they may?14

If men and women were identical in their aspirations and aptitudes, these would quite possibly amount to the same thing: levelling the playing field would automatically result in a 50:50 sex ratio, or something close to it. However, given that men and women are not identical in their aspirations and aptitudes, we have no reason to expect gender parity, even under conditions of perfect fairness. On the contrary, the natural expectation would be that men and women would not be at parity, but rather that men would be more common in some fields, and women in others, as a result of their freely made choices. To the extent that this is the case, it becomes much more difficult to justify pursuing a 50:50 sex ratio in every field. Most women do not want a career in STEM and nor do most men. Why should the small fraction of women who do want such a career be the same size as the small fraction of men? To put it another way, as long as everyone has the opportunity to pursue a STEM career, and as long as the selection process is fair, why would it be important to get as many women as men into jobs that fewer women want?

The pursuit of happiness

One way to start tackling this question would be to observe that a 50:50 sex ratio in STEM is presumably not a good in itself, but is a good only in as much as that it increases human wellbeing. Importantly, though, to the degree that occupational disparities are a product of men and women acting on their own preferences and pursuing their own best interests, it is doubtful that forcing a 50:50 sex ratio would actually achieve this end.

To begin with, men and women could have different life outcomes, but still be happy with their lives. One longitudinal study found that, among two cohorts of individuals identified as academically gifted as children, men and women had somewhat different aspirations and took somewhat different paths, but ended up similarly happy with their careers, their relationships and their lives overall (Lubinski et al., 2014). In other words, even among those best positioned to achieve their life ambitions, occupational gender parity appears not to be necessary for happiness.

Not only might it not be necessary, but policies that artificially engineer gender parity – financial incentives and quotas, for instance – could potentially lower aggregate happiness. To the extent that these policies work, they necessarily mean that some people will be funnelled into occupations that are less in line with their tastes and talents. To get more women into university physics programmes, for instance, would require persuading at least some women to choose that option when they otherwise would not have done so. (At the same time, unless enrolment numbers were increased, it would also mean turning away some men who otherwise would have.) The women in question would presumably not come from the ranks of housewives or secretaries; more than likely they would be women who would otherwise have gone into other, equally prestigious fields, such as law or medicine. Is there any reason to think that these women would be happier doing physics? Given that people tend to choose careers they think will suit them best and be most satisfying for them, it seems plausible to think that, on average, they might be somewhat less happy (Bretz & Judge, 1994De Fruyt, 2002Verquer et al., 2003).

Admittedly, this whole line of argument is premised on the assumption that the wellbeing of individual STEM workers ought to be the deciding factor, and some might reject that assumption. Anyone who does, though, should, we think, be expected to make a strong argument for that position. Why should we put a statistical, collective goal – i.e. more equal sex ratios in STEM – above the happiness and autonomy of the flesh-and-blood individuals who constitute those collectives? Why should policy makers’ preference for gender parity take precedence over individual men and women’s preferences regarding their own careers and lives?15

Sex differences as a sign of social health

A recurring theme in discussions of occupational gender disparities is the often-unspoken assumption that sex differences are inherently problematic, or that they constitute direct evidence of sexism and the curbing of women’s opportunities. Some research, however, points to the opposite conclusion. A growing body of work suggests that, in nations with greater wealth and higher levels of gender equality, sex differences are often larger than they are in less wealthy, less equal nations. This is true for a wide range of variables, including aggression (Nivette et al., 2019), attachment styles (Schmitt, Alcalay, Allensworth, et al., 2003), the Big Five personality traits (Schmitt et al., 2008), crying (Van Hemert et al., 2011), depression (Hopcroft & McLaughlin, 2012), enjoyment of casual sex (Schmitt, 2015), interest in and enjoyment of science (Stoet & Geary, 2018), intimate partner violence (Schmitt, 2015), self-esteem (Zuckerman et al., 2016), spatial ability (Lippa et al., 2010), STEM graduation rates (Stoet & Geary, 2018), subjective wellbeing (Schmitt, 2015) and values (Falk & Hermle, 2018).16 Importantly, the pattern is also observed for objectively measurable traits such as height, BMI and blood pressure (Schmitt, 2015), which gives some reason to think that it is not simply a product of cross-cultural differences in the ways that people answer questionnaires or take tests.

What, then, is the cause of the pattern? One possibility is that when people grow up in an enriched and relatively unconstrained environment, nascent differences between individuals – and average differences between the sexes – have more opportunity to emerge and grow. In the case of psychological traits, the suggestion would be that men and women in wealthier, more developed nations have greater freedom to pursue what interests them and to nurture their own individuality. This freedom may, in turn, result in larger psychological sex differences (Schmitt et al., 2008; although see Fors Connolly et al., 2019Kaiser, 2019).

Regardless of the reason, though, if certain sex differences are larger in societies with better social indicators, then rather than being products of a sexist or oppressive society, these differences may be indicators of the opposite: a comparatively free and fair one. If so, this casts society’s efforts to minimize the sex differences in an entirely new light. Rather than furthering gender equality, such efforts may involve attacking a positive symptom of gender equality. By mistaking the fruits of our freedom for evidence of oppression, we may institute policies that, at best, burn up time and resources in a futile effort to cure a ‘disease’ that isn?t actually a disease, and at worst actively limit people’s freedom to pursue their own interests and ambitions on a fair and level playing field.

The sexist assumption underlying the demand for parity

Finally, the strong emphasis on increasing the numbers of women in male-dominated fields is arguably somewhat sexist. As Susan Pinker (2008) argues, it tacitly assumes that women do not know what they want, or that they want the wrong things and thus that wiser third-parties need to ‘fix’ their existing preferences. It also tacitly assumes that the areas where men dominate are superior. The psychologist Denise Cummins (2015) put the point well when she observed that, ‘The hidden assumption underlying the push to eliminate gender gaps in traditionally male-dominated fields is that such fields are intrinsically more important and more valuable to society than fields that traditionally attract more women.’ Given that traditionally female-dominated fields include education, healthcare and social work, this assumption is not only sexist; it is also clearly false. As Judith Kleinfeld observed:

We should not be sending [gifted] women the message that they are less worthy human beings, less valuable to our civilization, lazy or low in status, if they choose to be teachers rather than mathematicians, journalists rather than physicists, lawyers rather than engineers. (cited in Steven Pinker, 2002, p. 359)

Certainly, many female-dominated fields pay less, on average, than male-dominated STEM fields.17 There is a great deal of debate about the reasons for this, and the extent to which it is a product of sexism vs. factors such as market forces (e.g. the fact that many female-dominated fields have a greater supply of workers) and personal preferences (e.g. the fact that, on average, women view pay as a less important consideration in choosing a career than men, and view things such as job security and flexible work hours as more important; Funk & Parker, 2018Gino et al., 2015Lubinski et al., 2014Redmond & McGuinness, 2019). Such matters are beyond the scope of this article. We would point out, though, that even if current pay disparities were entirely due to sexism, the most appropriate solution would presumably be to strive for fair pay in female-dominated fields, rather than trying to get more women into fields that pay more but which, on average, they find less appealing. And to the extent that the explanation is that women place less weight on a high income in choosing a career, and more weight on other things, efforts to get women to prioritize income tacitly assume, once again, that women’s existing priorities are misguided, and that they ought to adopt more male-typical priorities instead.

To be clear, we completely agree that we should endeavour to root out sexism wherever it still lurks, and tear down any lingering barriers to the progress of women in STEM (as well as any barriers to the progress of men). These are eminently good goals. However, for the reasons discussed, striving for a 50:50 sex ratio – or indeed any pre-specified sex ratio – is not a good goal.

People regard a large number of friends as a signal of social capital that increases their interpersonal attractiveness, but they personally prefer to make friends with someone who has a relatively small number of friends

Si, K., Dai, X., & Wyer, R. S., Jr. (2021). The friend number paradox. Journal of Personality and Social Psychology, 120(1), 84–98, Jan 2021. https://doi.org/10.1037/pspi0000244

Abstract: We identify a friend number paradox, that is, a mismatch between people’s preferences for the friends they might acquire in social interactions and their predictions of others’ preferences. People predict that others are attracted to them if they have a relatively large number of friends. However, they personally prefer to make friends with someone who has a relatively small number of friends. People regard a large number of friends as a signal of social capital that increases their interpersonal attractiveness. However, it can actually be a signal of social liabilities that diminish their ability to reciprocate obligations to others. We conducted a series of studies, including 3 speed-friending studies in which participants either engaged or expected to engage in actual interactions for the purpose of initiating long-term friendships. These studies provide converging evidence of the hypothesized mismatch and our conceptualization of its determinants.


Universality of the Triangular Theory of Love: Adaptation and Psychometric Properties of the Triangular Love Scale in 25 Countries

Universality of the Triangular Theory of Love: Adaptation and Psychometric Properties of the Triangular Love Scale in 25 Countries. Piotr Sorokowski et al. The Journal of Sex Research, Volume 58, 2021 - Issue 1, Pages 106-115, Aug 12 2020. https://doi.org/10.1080/00224499.2020.1787318

The Triangular Theory of Love (measured with Sternberg’s Triangular Love Scale – STLS) is a prominent theoretical concept in empirical research on love. To expand the culturally homogeneous body of previous psychometric research regarding the STLS, we conducted a large-scale cross-cultural study with the use of this scale. In total, we examined more than 11,000 respondents, but as a result of applied exclusion criteria, the final analyses were based on a sample of 7332 participants from 25 countries (from all inhabited continents). We tested configural invariance, metric invariance, and scalar invariance, all of which confirmed the cultural universality of the theoretical construct of love analyzed in our study. We also observed that levels of love components differ depending on relationship duration, following the dynamics suggested in the Triangular Theory of Love. Supplementary files with all our data, including results on love intensity across different countries along with STLS versions adapted in a few dozen languages, will further enable more extensive research on the Triangular Theory of Love.

Wikipedia: Triangular theory of love - Wikipedia

Extramarital Sex among Chinese Men and Women: Among married adults aged 20–59, the occurrence rate of EMS nearly tripled over the period 2000–2015, going from 12.9% to 33.4% for men, & from 4.7% to 11.4% for women

Prevalence and Patterns of Extramarital Sex among Chinese Men and Women: 2000-2015. Yueyun Zhang, Xin Wang & Suiming Pan. The Journal of Sex Research , Volume 58, 2021 - Issue 1, Pages 41-50, Aug 12 2020. https://doi.org/10.1080/00224499.2020.1797617

Despite growing concern about the “sexual revolution” in China in the past decades, empirical evidence regarding the national trends in prevalence and patterns of extramarital sex (EMS) remains sparse. This study aimed to fill this gap, using data from a population-based, repeated cross-sectional survey administered at four time points during the period 2000–2015. EMS was assessed by asking whether a person in marriage had engaged in sexual activity with someone else during the relationship with his/her current partner. Our findings showed that among married adults aged 20–59, the occurrence rate of EMS nearly tripled over the period 2000–2015, increasing from 12.9% to 33.4% for men, and from 4.7% to 11.4% for women. Moreover, in the early years of this century, EMS was negatively associated with older age (50–59 years), lower educational level (elementary and below) and rural residence for men, and negatively associated with older age and positively associated with higher educational level (college and above) for women. All these differences, however, disappeared in more recent years. Overall, this study indicates a marked increase in EMS, a widening gender gap in EMS, and for each gender, a convergence of EMS across various sociodemographic groups.


Wednesday, January 13, 2021

Understanding Sugaring, the World of Sugar Daddies and Sugar Babies: Participants perceived sugar dating to be drama-free, casual, mutually beneficial and different from conventional romantic relationships

Sugaring: Understanding the World of Sugar Daddies and Sugar Babies. Srushti Upadhyay. The Journal of Sex Research, Jan 12 2021. https://www.tandfonline.com/doi/full/10.1080/00224499.2020.1867700

Abstract: A growing practice reflecting hookup culture and technological entrepreneurship, a “sugar arrangement” is a “beneficial relationship” between a “sugar baby” and a “sugar daddy”. In exchange for financial support, a sugar baby offers dating and companionship. In this study, I explored sugar culture in the United States: the reasons individuals are attracted to it and the benefits sugaring provides for them. I examined 90 sugar baby profiles and 108 sugar daddy profiles on SeekingArrangement.com; I also studied discussion forums and responses on LetsTalkSugar.com. Participants perceived sugar dating to be drama-free, casual, mutually beneficial and different from conventional romantic relationships. Sugaring provides a discrete, short- or long-term arrangement for individuals who attempt to avoid the stigma associated with commercial sex workers. A key finding was that both sugar babies and sugar daddies described techniques to mentally and emotionally distance themselves from being associated with the sex industry.


Using Dutch registry and U.S. survey data, we show that couples with daughters face higher risks of divorce, but only when daughters are 13 to 18 years old

Daughters and Divorce. Jan Kabátek, David C Ribar. The Economic Journal, ueaa140, December 30 2020. https://doi.org/10.1093/ej/ueaa140

Abstract: Are couples with daughters more likely to divorce than couples with sons? Using Dutch registry and U.S. survey data, we show that couples with daughters face higher risks of divorce, but only when daughters are 13 to 18 years old. These age-specific results run counter to explanations involving overarching, time-invariant preferences for sons and sex-selection into live birth. We propose another explanation that involves relationship strains in families with teenage daughters. In subsample analyses, we find larger child-gender differences in divorce risks for parents whose attitudes towards gender-roles are likely to differ from those of their daughters and partners. We also find survey evidence of relationship strains in families with teenage daughters.

JEL J12 - Marriage; Marital Dissolution; Family Structure; Domestic AbuseJ13 - Fertility; Family Planning; Child Care; Children; YouthJ16 - Economics of Gender; Non-labor Discrimination


Tuesday, January 12, 2021

Pornography Consumption and Attitudes Towards Pornography Legality Predict Attitudes of Sexual Equality

Pornography Consumption and Attitudes Towards Pornography Legality Predict Attitudes of Sexual Equality. David Speed  et al. The Journal of Sex Research, Jan 11 2021. https://www.tandfonline.com/doi/abs/10.1080/00224499.2020.1864263

Abstract: Some scholars argue that the existence of pornography is an ongoing assault on women and that it should be banned. However, the existing evidence suggests the connection between pornography consumption and sexism is overstated and may actually run in the opposite direction. Using data from the General Social Survey (2010–2018), the current study investigated if “pornography consumption” and “pornography tolerance” predicted sexism and whether these associations varied by sex. Results indicated that pornography consumption predicted lower levels of sexism, although these effects were rendered nonsignificant with the inclusion of sociodemographic, religious, and sociocultural covariates. When comparing the results of the current study to findings based on data from the 1970s–1990s, it appears that pornography consumption is now irrelevant to sexism rather than promoting egalitarianism. Our analyses focusing on “pornography tolerance” revealed that people who supported regulated pornography were more egalitarian than people who supported a pornography ban. Generally, men were more likely to report sexist attitudes than women, but sex moderated the relationship that pornography variables had with sexism in several of the models. Overall, pornography consumption and pornography tolerance were either irrelevant in predicting sexism or were associated with greater egalitarianism.


Ability emotional intelligence was a stronger predictor of performance in humanities than science; mechanisms under the EI/performance link can be regulating academic emotions & building social relationships at school

MacCann, C., Jiang, Y., Brown, L. E. R., Double, K. S., Bucich, M., & Minbashian, A. (2020). Emotional intelligence predicts academic performance: A meta-analysis. Psychological Bulletin, 146(2), 150-186, Jan 2021. http://dx.doi.org/10.1037/bul0000219

Abstract: Schools and universities devote considerable time and resources to developing students’ social and emotional skills, such as emotional intelligence (EI). The goals of such programs are partly for personal development but partly to increase academic performance. The current meta-analysis examines the degree to which student EI is associated with academic performance. We found an overall effect of ρ = .20 using robust variance estimation (N = 42,529, k = 1,246 from 158 citations). The association is significantly stronger for ability EI (ρ = .24, k = 50) compared with self-rated (ρ = .12, k = 33) or mixed EI (ρ = .19, k = 90). Ability, self-rated, and mixed EI explained an additional 1.7%, 0.7%, and 2.3% of the variance, respectively, after controlling for intelligence and big five personality. Understanding and management branches of ability EI explained an additional 3.9% and 3.6%, respectively. Relative importance analysis suggests that EI is the third most important predictor for all three streams, after intelligence and conscientiousness. Moderators of the effect differed across the three EI streams. Ability EI was a stronger predictor of performance in humanities than science. Self-rated EI was a stronger predictor of grades than standardized test scores. We propose that three mechanisms underlie the EI/academic performance link: (a) regulating academic emotions, (b) building social relationships at school, and (c) academic content overlap with EI. Different streams of EI may affect performance through different mechanisms. We note some limitations, including the lack of evidence for a causal direction.

Public Significance Statement: This meta-analysis shows that emotional intelligence has a small to moderate association with academic performance, such that students with higher emotional intelligence tend to gain higher grades and achievement test scores. The association is stronger for skill-based emotional intelligence tasks than rating scales of emotional intelligence. It is strongest for skill-based tasks measuring understanding emotions and managing emotions.

Keywords: academic performance, emotional intelligence, intelligence, meta-analysis, personality


Discussion


Results from these meta-analyses demonstrate that EI shows a small to moderate relationship with academic performance, of similar effect size to well-known noncognitive predictors (e.g., ρ = .20 for EI vs. ρ = .22 for conscientiousness, based on the current meta-analysis and Poropat [2009]). Ability EI was a significantly stronger predictor than self-report or mixed EI, as hypothesized. Within ability EI, understanding and management branches had a stronger effect than perception or facilitation branches. There is no evidence for selective publication of larger effects, for stronger effects in younger students, nor that effects differ depending on the proportion of ethnic minority students in the sample. For the other moderators, effects were mixed or limited. There is limited evidence that the effect is stronger: (a) for less female-dominated samples (this effect was significant for total EI, but not for any of the three streams), (b) for grades than standardized test scores (this was significant for total EI and Stream 2 only), and (c) for humanities versus mathematics/science performance (this was significant for ability EI only).
There was evidence of incremental validity of EI over intelligence and personality, but this was largely restricted to mixed EI (which explained an additional 2.3% of the variance) and the understanding and management branches of ability EI (which explained an additional 3.9% and 3.6% of the variance respectively). That is, self-rated EI, total ability EI, and the lower two branches of ability EI (emotion perception and facilitation) provide little to no explanatory power for academic performance over intelligence and personality. These differences across the three streams suggest that the underlying mechanisms accounting for the EI/performance relationship may differ for ability EI, self-rated EI, and mixed EI.

Why Does EI Predict Academic Performance? Insights Based on Moderators

In our introduction, we suggested there were three reasons why EI may predict academic performance. First, students with higher EI may be more able to regulate the negative emotions such as anxiety, boredom, and disappointment involved in academic performance. If this is true, emotion management would be responsible for the effects. Second, students with higher EI may be better able to manage the social world around them, forming better relationships with teachers, peers, and family. If this was the case, emotion management would again be responsible for the effect, and the effect would be stronger for grades than for standardized tests. Third, EI competencies may overlap with the academic competencies required for humanities subjects like history and language arts (e.g., understanding human motivations and emotions). In this case (a) understanding—the knowledge base of EI—would show the strongest effect and (b) the effect would be bigger for humanities than sciences. Based on the significant moderations, there is some support for each of these effects, with slightly different results for different streams of EI. We discuss the significance moderations below, with respect to these three proposed mechanisms.

Evidence for Mechanism 1: Is Emotion Management the Key Ingredient in EI?

Joseph and Newman (2010) proposed a “key conceptual role” of emotion management for predicting job performance (p. 69), proposing emotion management as the proximal predictor of performance. The facet-level moderation for ability EI provides partial support for this assumption, finding that management and understanding are jointly the strongest predictors of academic performance. Both these branches (management and understanding) showed significantly stronger effects than the two other branches. The effect was larger for understanding than management, but not significantly so (ρ = .35 vs. ρ = .26) and was equal after accounting for the effects of intelligence and personality (partial ρ = .22 in both cases). That is, both emotion understanding and emotion management are active ingredients in the prediction of academic performance. We believe this is consistent with an interpretation that EI affects academic performance through the regulation of academic emotions, but also due to the relevance of emotion content knowledge for academic performance in the humanities.
The critical role of emotion understanding for academic performance has implications for comparing ability EI with self-rated EI. For self-rated EI, many of the effects in our meta-analysis used instruments that did not include emotion understanding content (because they were based on an older definition of EI that did not have emotion understanding in the definition). Specifically, 50% of the Stream 2 citations used the Schutte Self-Report Scale, Trait Meta-Mood Scale, or the Wong-Law Emotional Intelligence Scale, which do not include a subscale assessing emotion understanding. Given that ability EI shows the strongest relationship for emotion understanding, the difference in effect size between ability EI and self-rated EI measures may in fact represent a difference in content (i.e., prediction is greater for tests that include emotion understanding content) rather than a difference in method (ability scales vs. rating-scales). Many of the more recent self-rated EI tests do include an emotion understanding component (e.g., Anguiano-Carrasco, MacCann, Geiger, Seybert, & Roberts, 2015Brackett et al., 2006).

Evidence for Mechanism 2: Are EI Competencies Required for Academic Content?

Moderation analyses largely support the idea that performance on academic tasks require some EI competencies. First, academic performance related significantly more strongly to ability EI than to the other two streams. This finding differs from meta-analyses predicting job performance, where ability EI is consistently the weakest predictor of the three streams (Joseph & Newman, 2010Miao et al., 2017O’Boyle et al., 2011). This difference may relate to assessment methods. Academic performance is mainly assessed with objective tasks (i.e., evaluations of a product, such as an essay, lab report, speech, worksheet or test), whereas job performance is most often assessed via supervisor ratings. Similarly, ability EI is assessed with objective tasks and self-rated and mixed EI are assessed with rating scales. We would expect stronger predictor-criterion relationships when predictor and criterion have the same method. As such, a higher relationship for ability EI (as compared to the other streams) may represent method bias rather than content overlap of academic and emotional knowledge.
However, ability EI (but not self-rated or mixed EI) relates more strongly to performance in humanities than sciences. This is one of the larger differences we found, where the effect was nearly twice as large for humanities as sciences (ρ = .38 vs. .21). Objective measurement of performance is similar across humanities and sciences. The academic processes (social context and the student’s emotions and emotion regulation in the classroom) are also similar for different subdisciplines. Although subdisciplines differ in the degree of social interaction involved, the degree of social interaction does not align with the humanities versus science categorization (e.g., science frequently involves lab partners or group work, whereas this is rare for mathematics). As such, we interpret this difference in subject areas to be largely attributable to a difference in academic content, and specifically the relevance of emotion knowledge to subjects requiring an understanding of people and their interactions, motivations, and emotions (i.e., literature, history, geography, drama and other humanities subjects). The first standard of The Standards for the English Language Arts (1996), as put forward by the National Council of Teachers of English (1996) states that the purpose of reading texts is to “build an understanding of . . . themselves and the cultures of the United States and the world” and the second standard states that the purpose is “to build an understanding of the many dimensions (e.g., philosophical, ethical, aesthetic) of human experience” (p. 19). That is, broad statements of content for achievement in language arts inherently involve an understanding of oneself and of others in terms of the intangible nature of being human—which we would argue is essentially emotions and social interactions. That is, understanding human emotions and the social and situational causes appear to be an underlying component of achievement in language arts.
In addition, the fact that the emotion understanding showed the strongest relationship to academic performance (as compared to the other four branches) supports the interpretation mentioned above, where understanding emotional content is a key part of the content of language arts education. It is possible to view emotion understanding as a kind of domain-specific knowledge, where the content domain is emotions. Content knowledge of emotion words, as well as the causes and consequences of emotions, appear highly relevant for understanding character motivations in literature as well as other academic subject matter relating to people and how they shape societies, countries and history (i.e., history, geography, psychology, sociology).
One possible interpretation is that the ability EI/academic performance association may be due to a third variable—reading comprehension. Because ability EI tests involve interpreting written text, reading comprehension ability may constitute construct-irrelevant variance on such tests (AERA, APA, & NCME, 2014) that may partially explain the relationship between EI and academic performance. This particularly affects understanding and management tests, which involve more and more complex text (e.g., most management tests involve a paragraph of text in each item stem). However, the fact that emotion understanding and management predicted academic performance over-and-above the effect of intelligence suggests that this confound does not account for the entirety of the relationship between ability EI and academic performance. Nevertheless, the relationship was greatly reduced, particularly for emotion understanding. Because the partial correlations remained of small to moderate size after accounting for intelligence, our interpretation is that the bulk of the content overlap represents more than a reading comprehension method effect, particularly for emotion management. Taken together, results support the suggested mechanism whereby EI predicts academic performance because of the emotional content required in academic subjects.

Evidence for Mechanism 3: Does EI Affect Academic Performance Through Interpersonal Processes?

If EI exerts an influence on academic performance via the ability to develop social relationships in the educational context, then EI should have a stronger effect on grades than standardized tests (as the social networking and relationship building with other students and teachers should have a stronger effect on grades than on standardized tests). This difference was significant only for self-rated EI and the three streams combined (not for ability or mixed EI). Self-rated EI did not relate to standardized test scores at all (ρ = −.03). In contrast, ability EI and mixed EI related to both grades and standardized tests. This suggests that academic performance relates to self-rated EI through relationship building only. In contrast, academic performance relates to ability EI and mixed EI through both relationship building and mechanisms related to regulating academic emotions.
For all three streams of EI, there is evidence that higher EI relates to building social relationships in a school environment. Ability EI relates to peer-nominations of reciprocal friendship in college students and to higher-quality of social interactions with others (Lopes et al., 2004Lopes, Salovey, Coté, Beers, & Petty, 2005). Self-rated EI predicts greater social support in both high school and university students (Ciarrochi, Chan, & Bajgar, 2001Kong, Zhao, & You, 2012). Mixed EI is associated with peer reports of cooperative behavior (Mavroveli, Petrides, Rieffe, & Bakker, 2007Petrides, Sangareau, Furnham, & Frederickson, 2006). There is also evidence that both ability EI and mixed EI relate to using more effective strategies to regulate negative emotions (Peña-Sarrionandia, Mikolajczak, & Gross, 2015).
Taken together with these findings, we propose that differences between the three streams of EI relate to the number of mechanisms that underlie the EI/performance relationship. Specifically, (a) self-rated EI predicts academic performance only through a relationship building pathway (students with higher emotional self-efficacy can build better relationships with teachers and peers), (b) mixed EI predicts academic performance through both relationship building and the regulation of academic emotions, and (c) ability EI predicts academic performance through relationship building, regulation of academic emotions, and also through emotion content knowledge requirements of some academic areas. This explanation accounts for the relatively greater prediction of academic performance by ability EI than mixed EI than self-rated EI and is consistent with the pattern of moderators we found.

The Relative Importance of EI to Academic Achievement

One of the critical drivers of EI’s early popularity was the idea that emotional skills are more important than intelligence in predicting life success. Indeed, the title of Daniel Goleman’s first book, the catalyst for EI’s snowballing popularity, was Emotional intelligence: Why It Can Matter More Than IQ. The 1995 cover story of TIME magazine made similar claims, stating that “emotions, not IQ, may be the true measure of human intelligence” (Gibbs, 1995, p. 60). These early claims were generally not borne out by research on job performance. Although EI predicts better job performance (Joseph & Newman, 2010O’Boyle et al., 2011), a critical mass of research indicates that intelligence is a much stronger predictor and is in fact the single best predictor of job performance (Ree & Earles, 1992Salgado et al., 2003Schmidt & Hunter, 1998). We found largely similar results for academic performance. Although EI predicts academic performance, intelligence was a much stronger predictor, with relative importance analysis indicating that cognitive ability was the single most important predictor of academic performance.
Although the popular press hype about EI was not substantiated, we nevertheless believe that demonstrating a small to moderate effect size is informative for research and practice. Moreover, some of the recent changes occurring in education and assessment practices may increase the importance of noncognitive qualities, including EI.
The first such change to modern assessment and learning practice is the increasing use of group activities, including collaborative group assessments (Ahles & Bosworth, 2004). Managing the social relationships and interpersonal conflicts of the group may thus become more and more reflected in students’ end of semester grades. A second change to education practices is the extent to which graduate attributes (also referred to as 21st century skills or noncognitive constructs) are emphasized by schools and universities (e.g., Clarke, Double, & MacCann, 2017). Graduate attributes often include social-emotional skills such as leadership, communication, teamwork, and intercultural competencies, with some institutions explicitly including EI as a graduate attribute. For example, Australia uses Goleman’s model of EI as the basis for its national K–10 curriculum of personal and social competencies that students should be developing as they progress through primary and secondary education (ACARA, 2017). Schools and universities are increasingly attempting to embed these graduate qualities within the content that is taught and assessed. As such, high grades might increasingly reflect skill development in these areas.
A third change to the classroom is the extent to which computers and technology are now an integral part of education. In tertiary education, there are a large and increasing number of online only courses or courses that have at least some online-only content (most famously, the Massive Open Online Courses [MOOCs]). There are two main differences between traditional face-to-face learning and online learning. First, in a traditional face-to-face university course, the schedule of learning is set by the schedule of the face-to-face lectures. In contrast, an online only course requires the learner to manage their own schedule of accessing online content, such that students with poor time management will not succeed (MacCann, Fogarty, & Roberts, 2012). Second, in a traditional face-to-face course, communication with teachers and other students occurs through in-person conversation, with access to multiple channels of information (e.g., facial and vocal expression, body language, and real-time clarification of misunderstandings). Online communication is more often based on text (e.g., discussion boards, emails, or computer chat). Most neurotypical people find it more difficult to detect another person’s emotions and social needs from text rather than face-to-face contact. As such, greater emotional skills are required to build relationships with the instructor or other students in an online environment. Thus, social and emotional skills (both self-regulation and interpersonal skills) may become increasingly important as tertiary education involves a greater amount of online content.

Practical Implications

One of the major findings of this meta-analysis is that different parts of EI are differentially important for academic performance. Any applied uses of EI in education seem limited to the three parts of EI with nontrivial incremental validity: mixed EI, emotion management ability, and emotion understanding ability. There are three broad applications that might be considered: (a) identifying students at risk for failure, attrition, or underperformance; (b) selection decisions for high-stakes educational opportunities; and (c) policy decisions about the relative cost versus benefit of implementing SEL or EI training programs in schools.
The first two applications (identifying at risk students, and high-stakes selection) require careful consideration of response distortion issues. Particularly in a high-stakes selection context, test-takers are motivated to gain high scores and will distort their responses on rating scales to ‘fake high’ (Birkeland, Manson, Kisamore, Brannick, & Smith, 2006Viswesvaran & Ones, 1999). Faking is a consequential issue with personality scales, which use self-report or observer-report ratings that test takers can fake. Observer-reports do not necessarily solve this problem, as the observers are often not impartial, but may be school staff with a vested interest in their students gaining entrance to prestigious colleges or programs. Faking is a problem for rating-scale measures of EI, but not for ability scales (Day & Carroll, 2008Grubb & McDaniel, 2007Tett, Freund, Christiansen, Fox, & Coaster, 2012). The current meta-analysis is the first to demonstrate that the relationship between EI and academic performance holds for ability-based tests as well as rating scales (in fact, the relationship is actually higher for ability-based EI tests as compared to rating scales). As such, we demonstrate a pathway that might provide modest increments in high-stakes education selection decisions—using ability-based EI assessments of understanding and managing emotions (based on current results, other parts of ability EI are not important). Ability-based EI tests are already used for selection into medical schools in several countries, and evidence supports their use for selecting better candidates (Libbrecht, Lievens, Carette, & Côté, 2014Lievens & Sackett, 2006). However, such tests are rarely used in other broader education selection contexts. If EI is considered as a selection procedure (perhaps as an add-on to intelligence and personality assessment), we suggest that ability tests of understanding and managing emotions be preferred over rating scales (due to response distortion) or tests of facilitation or management (due to low incremental prediction over intelligence and personality).
A national and international focus on standardized tests to measure academic performance and milestones has lead schools, districts, states, and countries to focus on achievement in the narrow range of academic content that such tests focus on. Alongside this, classroom teachers face increasing challenges to their workload, including adapting the curriculum to individual students’ needs, the mainstreaming of students with special educational requirements, and adapting to rapidly changing curriculum and policy (Skaalvik & Skaalvik, 2007). Against this background, devoting resources to teaching children EI skills can be seen as taking teacher resources and classroom time away from more critical activities that will increase test scores and achievement. What our meta-analysis shows is that EI skills are in fact associated with higher academic performance. This implies that time spent teaching EI skills may not necessarily detract from student achievement, given that higher EI students also show higher achievement. Again, we highlight the different importance of the four EI abilities as a guide for where to focus skills training—a focus on perceiving emotions is likely to be less useful than a focus on understanding and managing emotions.
Our meta-analysis also has implications for the effects of the such training programs (or a focus on EI more generally) on the known achievement gaps between ethnic groups and between males and females. Although there is evidence that the Black-White achievement gap is slowly closing, differences in the achievement for minority students compared with White students remain substantial, at around 0.75 standard deviations for Black students and around 0.60 standard deviations for Hispanic students (Hansen, Mann Levesque, Quintero, & Valant, 2018). There is also increasing evidence that males are falling behind females in terms of the grades they receive and their participation in higher education (Fortin, Oreopoulos, & Phipps, 2015). Against this background, it is important to note that the effect of EI on academic performance does not appear to differ for minority students versus White students, and that gender differences are negligible and when significant favor males (who currently show lower achievement). These results imply, at the very least, that efforts to improve EI are unlikely to widen the achievement gaps.
The key role of emotion understanding and management is also important to consider in terms of EI training programs. Three recent meta-analyses on the effectiveness of EI training have reported significant increases in EI, with effect sizes of .45, .46, .51, and .61 (Hodzic, Scharfen, Ripoll, Holling, & Zenasni, 2018Mattingly & Kraiger, 2019Schutte, Malouff, & Thorsteinsson, 2013). Hodzic et al. found that programs based on the ability model were significantly more effective than those based on mixed models (g = .60 vs. .31), and that emotion understanding showed the largest increase of all the ability EI branches—significantly more than emotion facilitation (g = .69 vs. .42). That is, it seems that programs are effective for increasing ability EI, and particularly its emotion understanding facet. This is highly relevant for our own meta-analysis, where ability EI (and specifically emotion understanding) showed the highest association with academic performance. That is, EI training seems to produce the strongest increases in exactly those competencies that are most relevant for academic performance.
Although Hodzic et al. did not distinguish between EI training programs for workplace applications and EI training programs for schools and universities, several studies conducted in schools and universities report similar findings regarding the largest increases for emotion understanding. For example, Pool and Qualter (2012) conducted a training study in university students and found the largest increase in ability EI was for emotion understanding (and the second-largest for emotion management). Moreover, evidence from the RULER Feeling Words curriculum (an EI development program for secondary school students) shows that EI training programs increase grades as well as social and emotional competencies. Specifically, students completing the RULER showed improved school grades as well as improved teacher ratings of social and emotional competencies compared to control groups (Brackett, Rivers, Reyes, & Salovey, 2012). In fact, the relative increase in school grades was a larger effect than the relative increase in social and emotional competencies. That is, EI training programs are likely to increase academic performance as well as social and emotional outcomes, such that education decision-makers and policymakers are not faced with a decision of whether to invest in social/emotional wellbeing at the expense of student achievement—evidence suggests that these programs likely do both. This is a critical piece of information for schools deciding where to best allocate their resources.

Limitations

Our results demonstrated only that EI and academic performance are significantly associated, but not that higher EI causes higher achievement. Only three of the citations reported a longitudinal design, such that the empirical evidence for EI causing later achievement is very weak (Costa & Faria, 2015Qualter et al., 2012Stewart & Chisholm, 2012). This association could occur because (a) higher EI causes increased academic performance, (b) higher achievement causes increased EI, or (c) there are one or more variables that influence both EI and academic performance. In the introduction, we outlined the reasons we believe theoretically that EI could cause later achievement. However, there are also feasible pathways by which greater academic performance could cause higher EI. Greater academic performance could feasibly result in increased self-esteem, greater opportunities for social and emotional development, and higher expectations for social skills and emotion regulation. High academic performance may act as a gateway for gifted and talented programs, streaming into enrichment activities, and a culture of high expectations from teachers, parents, and communities that permeate social and emotional behaviors as well as academic ones via the halo effect (Nisbett & Wilson, 1977). Conversely, low academic performance may act as a barrier to opportunities to develop social and emotional skills through loss of privileges for academic failures (e.g., losing recess playtime or evening socialization to complete work or denied extracurricular activity participation because of course failure), the development of strong negative emotions surrounding school and schoolwork, and the correspondingly low expectations for social and emotional behaviors. It seems likely that the reality is complex, with bidirectional effects of academic and emotional development, particularly in the earlier years of school.
One further limitation of the current article concerns the use of the meta-analytic correlation matrix (used to test Hypotheses 10 and 11). This was composed of estimates taken from different journal articles from different research teams, and therefore did not use the same methods for estimation nor the same samples. Although we used RVE in the current study, all other sources for effect sizes were obtained by aggregating multiple effect sizes from the same study. All studies except for Poropat (2009) corrected for unreliability as well as range restriction. The personality/academic performance estimation was not corrected for range restriction of measurement in either the predictor or criterion (Poropat, 2009). The possible effect of this would be to underestimate the prediction and relative importance of personality traits such as conscientiousness.

Future Research and Recommendations

One obvious future direction for further research is to test our three proposed mechanisms of the EI/performance relationship: (a) social relationship building, (b) regulation of academic emotions, and (c) content overlap between EI and academic subject matter. For point a, an analysis of content overlap between the competencies of EI and the different processes required for success in different disciplines could be undertaken by a panel of educators. Longitudinal research involving all three streams could test whether all three mediate ability EI, (a) and (b) mediate mixed EI, and (a) along mediates self-rated EI, as we proposed. As we mention above, there is a paucity of long-term longitudinal research on EI and academic performance. As such, examining mediators of the link as well as conducing lagged panel models to tease apart the direction of causation is important.
Although there is ample evidence that training EI works (e.g., Hodzic et al., 2018Mattingly & Kraiger, 2019Schutte et al., 2013), we are not aware of experimental studies on EI training that examine the effects of training different branches of EI. Such designs would isolate which facets of EI are most relevant for the improvement of which types of outcomes and would also provide stronger evidence for the causal direction from EI to academic performance.