Extracting highly positive association rules from students' enrollment data

Association Rules Mining is one of the popular techniques used in data mining. Positive association rules are very useful in correlation analysis and decision making processes. In educational context, determine a “right” program to the students is very unclear especially when their chosen programs a...

Full description

Bibliographic Details
Main Authors: Zailani, Abdullah, Herawan, Tutut, Noraziah, Ahmad, Mustafa Mohamed, Mat Deris
Format: Article
Language:English
Published: Elsevier Ltd. 2011
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/24799/1/Extracting%20highly%20positive%20association%20rules%20from%20students.pdf
Description
Summary:Association Rules Mining is one of the popular techniques used in data mining. Positive association rules are very useful in correlation analysis and decision making processes. In educational context, determine a “right” program to the students is very unclear especially when their chosen programs are not selected. In this case, normally they will be offered to other programs based on the programs availability and not according to their program's field interests. The main concern is, by assigning inappropriate program which is not reflected their overall interest; it may create serious problems such as poorly in academic commitment and academic achievement. Therefore, Therefore in this paper, we proposed a model which consists of pre-processing, mining patterns and assigning weight to discover highly positive association rules. We examined the previous chosen programs by computer science students in our university for July 2008/2009 intake. The result shows that the proposed model can mine association rules with high correlation. Moreover, for data analysis, there are existed students that have been offered in computer science program at our university but not within their program's field interests.