Mineração de dados educacionais: uma análise sobre as variáveis que influenciam na evasão escolar
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Universidade do Estado do Amazonas
Resumo
The school evasion is a big problem that concerns the Brazilian educational scenario.
This paper presents some factors that cause this concern, and a solution to part of
the problem is presented by using Educational Data Mining. The objective is to identify
variables related to school dropout of elementary school students from Amazonas State
schools and to create a model for predicting the probability of dropout using machine
learning methods. The methodology was based on the CRISP-DM model, widely used
for data mining. Three prediction learning models were trained and evaluated: Logistic
Regression, Decision Trees and Random Forests. Among the variables used, it is
noteworthy that most of them correspond to school location data, school equipment and
student age.