SDA-Vis : a visualization system for student dropout analysis based on counterfactual exploration.
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2022
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Resumo
High and persistent dropout rates represent one of the biggest challenges for improving
the efficiency of the educational system, particularly in underdeveloped countries. A range of
features influence college dropouts, with some belonging to the educational field and others to
non-educational fields. Understanding the interplay of these variables to identify a student as a
potential dropout could help decision makers interpret the situation and decide what they should
do next to reduce student dropout rates based on corrective actions. This paper presents SDA-Vis,
a visualization system that supports counterfactual explanations for student dropout dynamics,
considering various academic, social, and economic variables. In contrast to conventional systems,
our approach provides information about feature-perturbed versions of a student using counterfactual
explanations. SDA-Vis comprises a set of linked views that allow users to identify variables alteration
to chance predefined students situations. This involves perturbing the variables of a dropout student
to achieve synthetic non-dropout students. SDA-Vis has been developed under the guidance and
supervision of domain experts, in line with some analytical objectives. We demonstrate the usefulness
of SDA-Vis through case studies run in collaboration with domain experts, using a real data set from
a Latin American university. The analysis reveals the effectiveness of SDA-Vis in identifying students
at risk of dropping out and proposes corrective actions, even for particular cases that have not been
shown to be at risk with the traditional tools that experts use.
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Counterfactual explanation, Visual learning explanation, Visual analytics
Citação
GARCIA ZANABRIA, G. et al. SDA-Vis: a visualization system for student dropout analysis based on counterfactual exploration. Applied Sciences, v. 12, n. 12, artigo 5785, 2022. Disponível em: <https://www.mdpi.com/2076-3417/12/12/5785>. Acesso em: 06 jul. 2023.