We use gradient boosting machines and logistic regression to predict academic throughput at a South African university. The results highlight the significant influence of socio-economic factors and field of study as predictors of throughput. We further find that socio-economic factors become less of a predictor relative to the field of study as the time to completion increases. We provide recommendations on interventions to counteract the identified effects, which include academic, psychosocial and financial support.
翻译:我们利用梯度加速机器和后勤回归来预测南非一所大学的学术输送量,结果突出表明社会经济因素和研究领域作为输送量预测因素的重大影响,我们进一步发现,随着完成时间的增加,社会经济因素相对于研究领域的预测因素会越来越少,我们建议采取干预措施,以抵消已查明的影响,包括学术、社会心理和财政支助。