Understanding which student support strategies mitigate dropout and improve student retention is an important part of modern higher educational research. One of the largest challenges institutions of higher learning currently face is the scalability of student support. Part of this is due to the shortage of staff addressing the needs of students, and the subsequent referral pathways associated to provide timeous student support strategies. This is further complicated by the difficulty of these referrals, especially as students are often faced with a combination of administrative, academic, social, and socio-economic challenges. A possible solution to this problem can be a combination of student outcome predictions and applying algorithmic recommender systems within the context of higher education. While much effort and detail has gone into the expansion of explaining algorithmic decision making in this context, there is still a need to develop data collection strategies Therefore, the purpose of this paper is to outline a data collection framework specific to recommender systems within this context in order to reduce collection biases, understand student characteristics, and find an ideal way to infer optimal influences on the student journey. If confirmation biases, challenges in data sparsity and the type of information to collect from students are not addressed, it will have detrimental effects on attempts to assess and evaluate the effects of these systems within higher education.
翻译:现代高等教育研究的一个重要部分是高等教育机构目前面临的最大挑战之一是学生支助的可扩展性,其部分原因是缺乏满足学生需要的工作人员,以及随后提供学生支助战略的转诊途径,由于这些转诊困难,特别是学生往往面临行政、学术、社会和社会经济挑战的结合,这更为复杂。 解决这个问题的一个可能办法是结合学生结果预测和在高等教育中应用算法建议系统。虽然在扩大这方面解释算法决策方面做了大量的努力和细节,但仍需要制定数据收集战略。 因此,本文件的目的是概述一个具体用于推荐制度的相关数据收集框架,以减少收集偏差,理解学生特点,并找到理想的方法来推断学生旅程的最佳影响。如果不解决确认偏差、数据抽取方面的挑战和学生收集的信息类型,则将对高等教育中评估和评价这些系统影响的尝试产生有害的影响。