Educational researchers have long sought to increase student retention. One stream of research focusing on this seeks to automatically identify students who are at risk of dropping out. Studies tend to agree that earlier identification of at-risk students is better, providing more room for targeted interventions. We looked at the interplay of data and predictive power of machine learning models used to identify at-risk students. We critically examine the often used approach where data collected from weeks 1, 2,..., n is used to predict whether a student becomes inactive in the subsequent weeks w, w ≥ n + 1, pointing out issues with this approach that may inflate models’ predictive power. Specifically, our empirical analysis highlights that ...
Research in student retention is traditionally survey-based, where researchers use questionnaires to...
Using machine learning to predict students’ dropout in higher education institutions and programs ha...
Introduction: Machine learning algorithms use data to identify at-risk students early on such that d...
Research background: In this era of globalization, data growth in research and educational communiti...
Research Article published by Data Science JournalSchool dropout is absenteeism from school for no g...
Increase in computer usage for different purposes in different fields has made the computer importan...
none4noAmong the many open problems in the learning process, students dropout is one of the most com...
Identifying and monitoring students who are likely to dropout is a vital issue for universities. Ear...
This Study Presents a Systematic Review of the Literature on the Predicting Student Retention in Hig...
Improving student retention is an important and challenging problem for universities. This paper rep...
One of the challenges in implementing early alert systems to identify students at risk of failure or...
There has been great advancement in the area of learning analytics as well as in the creation of met...
Predictive modelling with the focus on identification of students at risk of failing has become one ...
College student retention is a key concern in higher education. Student dropping out has serious con...
Inefficient targeting of students at risk of dropping out might explain why dropout-reducing efforts...
Research in student retention is traditionally survey-based, where researchers use questionnaires to...
Using machine learning to predict students’ dropout in higher education institutions and programs ha...
Introduction: Machine learning algorithms use data to identify at-risk students early on such that d...
Research background: In this era of globalization, data growth in research and educational communiti...
Research Article published by Data Science JournalSchool dropout is absenteeism from school for no g...
Increase in computer usage for different purposes in different fields has made the computer importan...
none4noAmong the many open problems in the learning process, students dropout is one of the most com...
Identifying and monitoring students who are likely to dropout is a vital issue for universities. Ear...
This Study Presents a Systematic Review of the Literature on the Predicting Student Retention in Hig...
Improving student retention is an important and challenging problem for universities. This paper rep...
One of the challenges in implementing early alert systems to identify students at risk of failure or...
There has been great advancement in the area of learning analytics as well as in the creation of met...
Predictive modelling with the focus on identification of students at risk of failing has become one ...
College student retention is a key concern in higher education. Student dropping out has serious con...
Inefficient targeting of students at risk of dropping out might explain why dropout-reducing efforts...
Research in student retention is traditionally survey-based, where researchers use questionnaires to...
Using machine learning to predict students’ dropout in higher education institutions and programs ha...
Introduction: Machine learning algorithms use data to identify at-risk students early on such that d...