Abstract
Students in many jurisdictions can study Mathematics at different levels in their final 2 years of secondary education. The levels of Mathematics range from standard (not involving calculus), through basic calculus, to more advanced treatments of calculus and algebra. In this context, some students can elect to study Mathematics at a level below their ability. We consider the situation in New South Wales (NSW), Australia, where most Year 12 students who apply to university are awarded a percentile ranking, namely the Australian Tertiary Admission Rank (ATAR). The ATAR reflects students’ results in the final 2 years of secondary education and frequently determines what they can study at university. As the study of Mathematics is often segregated by gender, it is of interest to explore how boys’ and girls’ choices about level of Mathematics study affect their ATAR. We analyze administrative data for 46,000 senior secondary students in NSW who completed their Year 12 in 2011 and the Longitudinal Survey of Australian Youth (LSAY) for the same cohort. Using two-level regressions that control for relevant student and school characteristics, we find that, for a given level of performance in Mathematics in Year 10, girls see greater improvement than boys in Year 12 for all levels of Mathematics except the most advanced course. Girls who study basic Mathematics achieve ATAR increments as high as girls in some advanced courses. We discuss how awareness of these results may influence students’ decisions on what level of Mathematics to study in Years 11 and 12.
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Notes
Utilities and costs are central concepts in expectancy value theory when it is applied to explain gendered subject choices (Eccles 2011). Utilities are benefits that involve realization of short or long-term goals or obtaining external awards, whereas the costs refer to time, effort, and psychological impacts, i.e., “anticipated anxiety, fear of failure, and fear of the social consequences of success” (Eccles 2011 p.198).
We acknowledge the distinction between the cultural gender and the biological sex. However, in our data, no distinctions between gender diverse students are possible so we must assume that students are cis-gendered, i.e., their gender corresponds to their sex.
In the baseline model without any predictors, the school level variance is 158.868 and the student level variance is 332.488. So, the overall explained variance for the model in Table 6 is ((158.868 + 332.488) − (16.606 + 129.010)) / (158.868 + 332.488) which is 70%.
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This research is independent and not supported by any funding agency. The authors thank the New South Wales Education Standards Authority for the School Certificate test results, the Higher School Certificate test results, and the school characteristics data.
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Sikora, J., Pitt, D.G.W. Does advanced mathematics help students enter university more than basic mathematics? Gender and returns to year 12 mathematics in Australia. Math Ed Res J 31, 197–218 (2019). https://doi.org/10.1007/s13394-018-0249-3
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DOI: https://doi.org/10.1007/s13394-018-0249-3