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Poster
in
Affinity Workshop: LatinX in AI (LXAI) Research at ICML 2021

Effects of personality traits in predicting grade retention of Brazilian students

Lucka G Gianvechio · Carmen Toledo · Jonathan Ferreira · Felipe Polo · Renato Vicente


Abstract:

Student's grade retention is a key issue faced by many education systems, especially those in developing countries. In this paper, we seek to gauge the relevance of students' personality traits in predicting grade retention in Brazil. For that, we used data collected in 2012 and 2017, in the city of Sertãozinho, countryside of the state of São Paulo, Brazil. The surveys taken in Sertãozinho included several socioeconomic questions, standardized tests, and a personality test. Moreover, students were in grades 4, 5, and 6 in 2012. Our approach was based on training machine learning models on the surveys’ data to predict grade retention between 2012 and 2017 using information from 2012 or before, and then using some strategies to quantify personality traits' predictive power. We concluded that, besides proving to be fairly better than a random classifier when isolated, personality traits contribute to prediction even when using socioeconomic variables and standardized tests results.