Predicting the learner's personality from educational data using supervised learning

Abir Abyaa, Mohammed Khalidi, S. Bennani
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引用次数: 6

Abstract

Differences in the learners' personality have an impact on their learning outcomes and achievements. Therefore, there is a need to automatically predict and identify their personalities in an unobtrusive way, and build the learner model accordingly. In this paper, we try to identify the learner's personality dimensions, according to the big five personality model, using educational data features in order to develop an automatic classifier that predicts the learner's personality discreetly based on his/her traces in an online learning system. We applied seven different supervised learning classification algorithms, using personality scores for each dimension (high or low) as target values, and analyzed the results. The findings were encouraging and revealed that most of Big Five personality dimensions can in fact be predicted using mainly educational data features, which could have an added value on unobtrusive dynamic learner modelling.
利用监督式学习从教育数据中预测学习者的个性
学习者的个性差异会影响他们的学习成果和成就。因此,有必要以一种不显眼的方式自动预测和识别他们的个性,并相应地构建学习者模型。在本文中,我们尝试根据大五人格模型识别学习者的人格维度,利用教育数据特征开发一个自动分类器,根据学习者在在线学习系统中的痕迹谨慎地预测学习者的人格。我们应用了七种不同的监督学习分类算法,将每个维度的人格得分(高或低)作为目标值,并对结果进行了分析。研究结果令人鼓舞,并揭示了五大人格维度中的大多数实际上可以主要使用教育数据特征来预测,这可能对不引人注目的动态学习者建模具有附加价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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