Predicting students' academic performance is one of the key tasks of educational data mining (EDM). Traditionally, the high forecasting quality of such models was deemed critical. More recently, the issues of fairness and discrimination w.r.t. protected attributes, such as gender or race, have gained attention. Although there are several fairness-aware learning approaches in EDM, a comparative evaluation of these measures is still missing. In this paper, we evaluate different group fairness measures for student performance prediction problems on various educational datasets and fairness-aware learning models. Our study shows that the choice of the fairness measure is important, likewise for the choice of the grade threshold.
翻译:预测学生的学业成绩是教育数据挖掘(EDM)的关键任务之一。传统上,这类模型的高质量预测被认为是至关重要的。最近,性别或种族等受保护属性的公平和歧视问题得到了关注。虽然在EDM中存在若干公平意识的学习方法,但对这些措施的比较评价仍然缺失。在本文件中,我们评估了不同群体对各种教育数据集和公平意识学习模式的学生成绩预测问题的不同群体公平度量。我们的研究显示,公平度的选择很重要,同样对于等级门槛的选择也很重要。