One of the challenges in implementing early alert systems to identify students at risk of failure or withdrawal is striking a balance between accuracy and transparency, as there are clear benefits to being able to communicate the reason why a student has been identified. An important predictor of future academic success is past performance, which is generally not available for commencing students. Here, we present a work-in-progress in which the full predictive power of an ensemble-based machine learning approach is employed to make predictions for commencing students, while for ongoing students a simple logistic regression method is used
Personalized learning is being popular due to digitizations that enable a large number of technologi...
In response to the high school dropout crisis, which comes with great economic and social costs, ear...
The extent to which grades in the first few weeks of a course can predict overall performance can be...
In the current study interaction data of students in an online learning setting was used to research...
Student attrition is one of the long-standing problems facing higher education institutions despite ...
With the development of education big data, it is helpful for education managers to use machine lear...
In this study, we investigate the use of prediction modeling to build an early warning system to ide...
Abstract With the development of education big data, it is helpful for education manager...
Increase in computer usage for different purposes in different fields has made the computer importan...
Recent studies have provided evidence in favour of adopting early warning systems as a means of iden...
Educational researchers have long sought to increase student retention. One stream of research focus...
[[abstract]]An early warning system can help to identify at-risk students, or predict student learni...
Abstract Early prediction systems have already been applied successfully in various educational cont...
There has been great advancement in the area of learning analytics as well as in the creation of met...
Using data mining methods, this paper presents a new means of identifying freshmen's profiles likely...
Personalized learning is being popular due to digitizations that enable a large number of technologi...
In response to the high school dropout crisis, which comes with great economic and social costs, ear...
The extent to which grades in the first few weeks of a course can predict overall performance can be...
In the current study interaction data of students in an online learning setting was used to research...
Student attrition is one of the long-standing problems facing higher education institutions despite ...
With the development of education big data, it is helpful for education managers to use machine lear...
In this study, we investigate the use of prediction modeling to build an early warning system to ide...
Abstract With the development of education big data, it is helpful for education manager...
Increase in computer usage for different purposes in different fields has made the computer importan...
Recent studies have provided evidence in favour of adopting early warning systems as a means of iden...
Educational researchers have long sought to increase student retention. One stream of research focus...
[[abstract]]An early warning system can help to identify at-risk students, or predict student learni...
Abstract Early prediction systems have already been applied successfully in various educational cont...
There has been great advancement in the area of learning analytics as well as in the creation of met...
Using data mining methods, this paper presents a new means of identifying freshmen's profiles likely...
Personalized learning is being popular due to digitizations that enable a large number of technologi...
In response to the high school dropout crisis, which comes with great economic and social costs, ear...
The extent to which grades in the first few weeks of a course can predict overall performance can be...