AbstractUsing predictive modeling methods, it is possible to identify at-risk students early and inform both the instructors and the students. While some universities have started to use standards-based grading, which has educational advantages over common score-based grading, at–risk prediction models have not been adapted to reap the benefits of standards-based grading in courses that utilize this grading. In this paper, we compare predictive methods to identify at-risk students in a course that used standards-based grading. Only in-semester performance data that were available to the course instructors were used in the prediction methods. When identifying at-risk students, it is important to minimize false negative (i.e., type II) error ...
In the globalised education sector, predicting student performance has become a central issue for da...
Student attrition is one of the long-standing problems facing higher education institutions despite ...
This paper presents a Support Vector Machine predictive model to determine if prior programming know...
AbstractUsing predictive modeling methods, it is possible to identify at-risk students early and inf...
Using predictive modeling methods, it is possible to identify at-risk students early in the semester...
Recent studies have provided evidence in favour of adopting early warning systems as a means of iden...
This study proposes an analytic approach which combines two predictive models (the predictive model ...
Predicting student performance in an academic institution is important for detecting at-risk student...
Today, predictive analytics applications became an urgent desire in higher educational institutions....
Predicting student performance in an academic institution is important for detecting at-risk student...
Poor academic performance of students is a concern in the educational sector, especially if it leads...
Increase in computer usage for different purposes in different fields has made the computer importan...
The pursuit of a deeper understanding of factors that influence student performance outcomes has lon...
The extent to which grades in the first few weeks of a course can predict overall performance can be...
Abstract With the development of education big data, it is helpful for education manager...
In the globalised education sector, predicting student performance has become a central issue for da...
Student attrition is one of the long-standing problems facing higher education institutions despite ...
This paper presents a Support Vector Machine predictive model to determine if prior programming know...
AbstractUsing predictive modeling methods, it is possible to identify at-risk students early and inf...
Using predictive modeling methods, it is possible to identify at-risk students early in the semester...
Recent studies have provided evidence in favour of adopting early warning systems as a means of iden...
This study proposes an analytic approach which combines two predictive models (the predictive model ...
Predicting student performance in an academic institution is important for detecting at-risk student...
Today, predictive analytics applications became an urgent desire in higher educational institutions....
Predicting student performance in an academic institution is important for detecting at-risk student...
Poor academic performance of students is a concern in the educational sector, especially if it leads...
Increase in computer usage for different purposes in different fields has made the computer importan...
The pursuit of a deeper understanding of factors that influence student performance outcomes has lon...
The extent to which grades in the first few weeks of a course can predict overall performance can be...
Abstract With the development of education big data, it is helpful for education manager...
In the globalised education sector, predicting student performance has become a central issue for da...
Student attrition is one of the long-standing problems facing higher education institutions despite ...
This paper presents a Support Vector Machine predictive model to determine if prior programming know...