Social Sciences, Vol. 14, Pages 672: Multilevel Intersectional Analysis to Identify Extreme Profiles in Italian Student Achievement Data


Social Sciences, Vol. 14, Pages 672: Multilevel Intersectional Analysis to Identify Extreme Profiles in Italian Student Achievement Data

Social Sciences doi: 10.3390/socsci14110672

Authors:
Enrico Contin
Leonardo Grilli

Students have diverse identities and social characteristics. The different combinations of these factors create a stratification that affects the learning outcomes. This study aims to identify the student profiles associated with the highest and lowest academic performance. To this end, we analyse data from the 2022/23 INVALSI Mathematics test for fifth-grade students. The approach used is the Multilevel Analysis of Individual Heterogeneity and Discriminatory Accuracy (MAIHDA), which highlights the intersectional nature of social inequalities in shaping academic achievement. The strata are defined by the intersections of sex, origin, family environment, parental education, and parental occupation. Moreover, recognising the critical role of the school context, we fit a cross-classified multilevel model with random effects for both intersectional strata and schools. Indeed, model fitting reveals that the school-level variance is substantial, being about three-fourths of the variance due to the intersectional strata. The results show that the lowest-performing students are characterised by an unfavourable family environment, parents with compulsory or unknown education, and parents who are unemployed or in blue-collar jobs.



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Enrico Contin www.mdpi.com