Literature shows that knowledge about contextual factors associated with student time to degree and CGPA could play an important role in enabling HEIs to make more accurate and informed decisions that enhance student learning. It is also seen that such knowledge could be discovered using data mining process hidden in past data of students and used for prediction of student performance as part of the decision making process. In line with this argument in this study time to degree (total number of semesters taken to graduate) and CGPA of students were studied taking into account course difficulty and semester as contextual factors. CRISPDM process was employed to mine student data. Results showed that classification could be used as the mode...
Competence based Management through Data mining approach helps academia to improve research and acad...
Educational sector produces data in large amount that is too voluminous and complex to understand. T...
Data mining is the non-trivial discovery of meaningful, new correlations, patterns and trends, and t...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
The exponential increase in universities’ electronic data creates the need to derive some useful inf...
Abstract ____This study aimed to analyze academic records specifically students’ performance using d...
Predictive modeling using data mining methods for early identification of students at risk can be ve...
Nowadays, researchers analyse student data to predict the graduation rate by looking at the characte...
The data mining provides better insight rather than the predefined queries or reports for quality en...
Data mining is slowly but surely making its way into the educational field after dominating the busi...
Government funding to higher education providers is based upon graduate completions rather than on ...
One of the main problems faced by university students is deciding the right learning path based on ...
Abstract — The main objective of higher education institutions is to provide quality education to it...
Abstract: The new interesting subject that offered by institution to interact more student is “DATA ...
Data mining combines machine learning, statistics and visualization techniques to discover and extra...
Competence based Management through Data mining approach helps academia to improve research and acad...
Educational sector produces data in large amount that is too voluminous and complex to understand. T...
Data mining is the non-trivial discovery of meaningful, new correlations, patterns and trends, and t...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
The exponential increase in universities’ electronic data creates the need to derive some useful inf...
Abstract ____This study aimed to analyze academic records specifically students’ performance using d...
Predictive modeling using data mining methods for early identification of students at risk can be ve...
Nowadays, researchers analyse student data to predict the graduation rate by looking at the characte...
The data mining provides better insight rather than the predefined queries or reports for quality en...
Data mining is slowly but surely making its way into the educational field after dominating the busi...
Government funding to higher education providers is based upon graduate completions rather than on ...
One of the main problems faced by university students is deciding the right learning path based on ...
Abstract — The main objective of higher education institutions is to provide quality education to it...
Abstract: The new interesting subject that offered by institution to interact more student is “DATA ...
Data mining combines machine learning, statistics and visualization techniques to discover and extra...
Competence based Management through Data mining approach helps academia to improve research and acad...
Educational sector produces data in large amount that is too voluminous and complex to understand. T...
Data mining is the non-trivial discovery of meaningful, new correlations, patterns and trends, and t...