In this paper, a case study is presented of an institutional modelling project whereby the most appropriate learning algorithm for the prediction of students dropping out before or in the second year of study was identified and deployed. This second-year dropout model was applied at programme level using pre-university information and first semester data derived from the Higher Education Data Analyzer (HEDA) management information reporting and decision support environment at the Cape Peninsula University of Technology. An open source platform, namely Konstanz Information Miner (KNIME), was used to perform the predictive modelling. The results from the model were used in HEDA automatically to recognize students with a high probability of dr...
The student’s retention rate is one of the challenging issues that representing the quality of the u...
In Portugal, the dropout rate of university courses is around 29%. Understanding the reasons behind ...
Digital transformation is enabling institutions to enhance their processes by using data and technol...
Data Mining has taken a center stage in education for addressing student dropout challenges as it ha...
Data Mining has taken a center stage in education for addressing student dropout challenges as it ha...
Using machine learning to predict students’ dropout in higher education institutions and programs ha...
Research background: In this era of globalization, data growth in research and educational communiti...
At this point attention on educational data mining methods have impact highly on predicting academi...
Predictive analytics including statistical techniques, predictive modelling, machine learning, and d...
International audienceAmong the many open problems in the learning process, students dropout is one ...
Identifying and monitoring students who are likely to dropout is a vital issue for universities. Ear...
To successfully reduce student attrition, it is imperative to understand which students are at risk ...
Government funding to higher education providers is based upon graduate completions rather than on ...
This Study Presents a Systematic Review of the Literature on the Predicting Student Retention in Hig...
The student’s retention rate is one of the challenging issues that representing the quality of the u...
The student’s retention rate is one of the challenging issues that representing the quality of the u...
In Portugal, the dropout rate of university courses is around 29%. Understanding the reasons behind ...
Digital transformation is enabling institutions to enhance their processes by using data and technol...
Data Mining has taken a center stage in education for addressing student dropout challenges as it ha...
Data Mining has taken a center stage in education for addressing student dropout challenges as it ha...
Using machine learning to predict students’ dropout in higher education institutions and programs ha...
Research background: In this era of globalization, data growth in research and educational communiti...
At this point attention on educational data mining methods have impact highly on predicting academi...
Predictive analytics including statistical techniques, predictive modelling, machine learning, and d...
International audienceAmong the many open problems in the learning process, students dropout is one ...
Identifying and monitoring students who are likely to dropout is a vital issue for universities. Ear...
To successfully reduce student attrition, it is imperative to understand which students are at risk ...
Government funding to higher education providers is based upon graduate completions rather than on ...
This Study Presents a Systematic Review of the Literature on the Predicting Student Retention in Hig...
The student’s retention rate is one of the challenging issues that representing the quality of the u...
The student’s retention rate is one of the challenging issues that representing the quality of the u...
In Portugal, the dropout rate of university courses is around 29%. Understanding the reasons behind ...
Digital transformation is enabling institutions to enhance their processes by using data and technol...