In this paper, we contribute to the literature by modelling study choices and study success in the Dutch higher educational system, from the transition from secondary school to graduation from STEM higher education. This comprises a time period of 4–5 years. A major contribution of this paper is that the data allow us to track a student’s educational career over the course of multiple consecutive years. We focus on enrollment and study success in STEM programs. In different phases of the model, students can either drop out, continue studying, or graduate from an STEM program. We use longitudinal Dutch register data including high school exam grades. All students in the Netherlands take the same high school exam, which allows for a robust comparison between students from different schools. We account for the low STEM enrollment rates among females (Arcidiacono et al., 2016; Buser et al., 2014, 2017; Hunt, 2015; Reuben et al., 2014; Venkatesh et al., 2003; Volman & Van Eck, 2001) by first considering the STEM enrollment decision. This is important for a fair comparison between different groups and to control for the influence of high school achievement on STEM enrollment.
In STEM programs at RU, we find that students with a migration background most often drop out in the first year of study, but if they do not drop out, their study success is on a par with that of native Dutch students. In UAS, the first year dropout rate is no different between students with and without a migration background, but we do observe lower study success among students with a migration background. It seems that UAS are better at preventing students with a migration background from dropping out during the course of the program, but if they do not graduate by the extra year that is permitted after year five of the program, the students with a migration background are more likely to drop out than students without a migration background. In RU STEM programs, students with a migration background are more likely to drop out during the program, but if they have not dropped out before the final year, students with a migration background in RU are just as likely to graduate when compared to students without a migration background at the end of the program.
The results of our study show that not only do female students perform worse than male students in both RU and UAS, females are also less likely to enroll in STEM programs. Presumably, these results are caused by existing gender differences in math scores (Guiso et al., 2008; Nollenberger et al., 2016), which are in turn driven by disparate degrees of competitiveness between boys and girls (Buser et al., 2014, 2017; Niederle & Vesterlund, 2010; Wang & Degol, 2017) and gender bias in the Dutch math curriculum (Haan, 2018; Hidalgo Saá, 2017). Commensurate with the pattern of reduced STEM enrollment prospects for females, we find that women are also less likely to graduate on time, whether within the nominal duration or within a year after the end of the nominal duration of the program.
In addition to these differences in interest between male and female students when making the decision to enroll in STEM, we find that female students are also more likely to drop out over the course of the program. This suggests that female students are not only less interested in STEM when choosing to enroll, they also lose interest in STEM over time. A conceptual model by Jouini et al. (2018) attributes this to stereotypes that are enforced during the STEM educational career. A strand of literature on STEM persistence also highlights the importance of parental support for female STEM students (Puccia et al., 2021; Talley & Martinez Ortiz, 2017; Verdín, 2021). Our results suggest that either this positive impact of parental support on STEM persistence decreases over time, or the negative impact of the enforcement of stereotypes gets the upper hand, leading to higher dropout rates for female students in the final years of the program.
Based on such diminished study success, it is arguably a rational choice for many women to avoid STEM programs when making enrollment decisions. However, an interesting pattern emerges when we consider longer-term graduation and dropout rates for female students. We find that gender-based differences in choice of major and study success disappear when we consider long-run graduation rates in a separate, long-run analysis (i.e., within 10 years after initial enrollment). A deeper long-run analysis of one of our cohorts reveals that women do not perform worse than men when examining the graduation pattern over a term of 10 years. In that case, female students are equally likely to graduate as male students. Indeed, in scrutinizing the first-year dropout rate in UAS, we observe that females are actually less likely to drop out. Based on these observations, it would appear that the gender differences in study success within STEM higher education only exist in terms of nominal graduation rates, and disappear in the long run. Therefore, advanced labor practice policy should be geared to bolster study success and to reduce first-year dropout rates among both female and students with a migration background.
In short, it seems that when we control for high school mathematics and language achievement, female and students with a migration background exhibit inferior study success conditional on STEM enrollment. From a randomized experiment, Russell (2017) concludes that female and minority students in STEM higher education might benefit from small, individualized learning communities. Indeed, smaller learning groups might explain the discrepancy in results between RU and UAS, since UAS tend to work with smaller bachelor’s degree classes. Students in UAS also stay in the same small group during the entire course of the program.
Although this paper benefits from unique longitudinal Dutch registration data, the conclusions are drawn within the context of the Dutch higher educational system. While this could be seen as a threat to external validity, the division of higher education into bachelor’s and master’s programs has been common practice in the European Union since ratification of the Bologna Treaty in 1999. The system has also been found for many years in Anglo-Saxon countries, such as the United Kingdom and the United States. In the Netherlands, the higher education system has been divided into bachelor’s and master’s programs since 2002, although it still distinguishes between the two types of bachelor’s programs: RU and UAS. This division is also common in many other European countries, such as Germany, Austria, Switzerland, Belgium, and several Scandinavian countries. Given such accepted practice, we argue that there are many similarities between the Dutch higher educational system and those in North America and Europe, making it plausible that the results from this paper may be generalized to other countries.
To recapitulate, we find that high school exam grades explain most of the variation for the dropout decision in the first year. Students with higher mathematics grades seem to be less likely to drop out of STEM higher education in the first year. This is especially true in the Netherlands for students who took mathematics B in high school. However, our results show that high school exam grades have little predictive power for study success. The literature points at relation between high school grades and study success (Danilowicz-Gösele et al., 2017), but this correlation is probably due to the tendency of admission officers to select students based on their high school achievement and cognitive test scores (Akos & Kretchmar, 2017). The present study is distinguishable in that aspect, because in the Netherlands, the selection of students at the admission stage is rare, especially in STEM fields. The majority of Dutch bachelor’s programs accept all applicants who have earned a high school diploma; grades or test scores are irrelevant to admission in the Netherlands. For the present study, therefore, this systemic disregard of grades and exam scores for purposes of university enrollment eliminates any upward bias in relation to admission selection that might otherwise be attributed to the predictive power of high school performance. Our results show that selecting students based on high school grades might only improve upon first year dropout rates, but will not improve study success. Moreover, the predictive power of high school grades on first year dropout rates might be due to the bindend studieadvies, an academic dismissal program that is in effect in the first year of higher education in the Netherlands. If students do not earn enough credits during the first year, they are forced to quit the program, and switch to a different one at the same institution or a similar program at a different institution (Cornelisz et al., 2019).
In summary, while we find evidence that female and students with a migration background perform worse in STEM higher education than native Dutch males, their performance is not uniformly poor in every aspect of enrollment, dropout rate, and study success. Female students are not as prone to enroll in an STEM program or to graduate in the nominal duration (or nominal duration plus one additional year), but they are more likely to survive the first year. Students with a migration background are less disposed to enroll in STEM in RU, and less apt to survive the first year. Students with a migration background are also unlikely to graduate on time in both RU and UAS. However, when we specifically examine the 2007 cohort, we are able to conclude that female students are equally, if not more likely than men to graduate within 10 years. This specific long-term analysis of the 2007 cohort does not reflect this same pattern. Students with a migration background are less apt to graduate within 10 years in RU, but this finding does not pertain to UAS. We therefore conclude that female students in general can perform well in STEM, but need support to help them graduate on time.
Improving on the underperformance of female students in STEM higher education can also contribute to relieving the labor market shortage of STEM workers. In other words, the STEM pipeline, which runs from the moment of enrollment to the point of graduation, is leaky. Policymakers should use our models to diagnose where exactly this STEM pipeline leaks by identifying where dropout and underperformance of female students is concentrated. In addition to having a lower probability to enroll in STEM, female students have a higher probability to drop out in the final years of the program. The literature on STEM persistence points at both increasing stereotypes and decreasing parental support over time that are at play here. However, a limitation of the present study is that based on our models, we cannot conclude why females drop out and how to prevent it besides identifying when it exactly happens. Further research should assess how these leaks can be fixed, or in other words, which interventions are effective in increasing interest and STEM persistence among females. This further research should be more focused on answering the question ‘What works?’, which should be addressed with randomized, evidence-based effect evaluations of interventions aimed at reducing the leaks in the STEM pipeline where capable female students are lost because they lose interest or switch to a non-STEM subject because they feel more welcomed there.