Uplift Modeling for preventing student dropout in higher education
作者:
Highlights:
• We propose an uplift modeling framework to maximize the effect of campaigns that aim to prevent student dropout.
• Uplift models are trained on data from a Chilean university that offered tutorials as a retention strategy.
• Students are segmented based on the predicted uplift to examine how pretreatment characteristics differ between the segments.
• Our study demonstrates the virtues of uplift modeling over conventional predictive modeling.
摘要
Uplift modeling is an approach for estimating the incremental effect of an action or treatment at the individual level. It has gained attention in the marketing and analytics communities due to its ability to adequately model the effect of direct marketing actions via predictive analytics. The main contribution of our study is the implementation of the uplift modeling framework to maximize the effectiveness of retention efforts in higher education institutions i.e., improvement of academic performance by offering tutorials. The objective is to improve the design of retention programs by tailoring them to students who are more likely to be retained if targeted. Data from three different bachelor programs from a Chilean university were collected. Students who participated in the tutorials are considered the treatment group, otherwise, they are assigned to the nontreatment group. Our results demonstrate the virtues of uplift modeling in tailoring retention efforts in higher education over conventional predictive modeling approaches.
论文关键词:Learning analytics,Uplift modeling,Student dropout,Educational data mining
论文评审过程:Received 22 January 2020, Revised 30 April 2020, Accepted 30 April 2020, Available online 11 May 2020, Version of Record 30 May 2020.
论文官网地址:https://doi.org/10.1016/j.dss.2020.113320