The use of algorithms for decision-making in higher education is steadily growing, promising cost-savings to institutions and personalized service for students but also raising ethical challenges around surveillance, fairness, and interpretation of data. To address the lack of systematic understanding of how these algorithms are currently designed, we reviewed an extensive corpus of papers proposing algorithms for decision-making in higher education. We categorized them based on input data, computational method, and target outcome, and then investigated the interrelations of these factors with the application of human-centered lenses: theoretical, participatory, or speculative design. We found that the models are trending towards deep learning, and increased use of student personal data and protected attributes, with the target scope expanding towards automated decisions. However, despite the associated decrease in interpretability and explainability, current development predominantly fails to incorporate human-centered lenses. We discuss the challenges with these trends and advocate for a human-centered approach.
翻译:高等教育决策使用算法的情况正在稳步增加,给教育机构和学生个人化服务带来有希望的成本节约,但也在监测、公平和数据解释方面提出了道德挑战。为了解决目前对这些算法设计方式缺乏系统了解的问题,我们审查了大量文件,建议高等教育决策采用算法。我们根据投入数据、计算方法和目标结果对它们进行分类,然后调查这些因素与应用以人为中心的镜头的相互关系:理论、参与性或投机性设计。我们发现,这些模型趋向于深层次学习,更多地使用学生个人数据和受保护的属性,目标范围扩大到自动决定。然而,尽管相关的可解释性和解释性下降,但目前的发展主要未能纳入以人为中心的视角。我们讨论了这些趋势的挑战,并主张采用以人为中心的方法。