Skip to main content
Article
Predicting students' performance using mutli-criteria classification: A case study
Proceedings of the 28th International Business Information Management Association Conference - Vision 2020: Innovation Management, Development Sustainability, and Competitive Economic Growth
  • Feras Al-Obeidat, Zayed University
  • Abdallah Tubasihat, Zayed University
Document Type
Conference Proceeding
Publication Date
1-1-2016
Abstract

One of the educational data mining goals is to predict students' performance, and analyzing their behavior. Several studies have been conducted to make use of different classifiers to reach this goal. In this research we describe our experience of applying multi-criteria decision aid (MCDA) in the educational data mining domain. We are contributing to this field by studying data analytic techniques applied to real-case studies to predict students' performance according to their past academic experience. Hence, the aim of this research is to utilize MCDA in the education domain. The classification tool that is used to predict students' performance is based several criteria such as: age, school, address, family size, evaluation in previous grades, and activities. Based on the data used used in this paper, we found that some criteria are more influential than others in predicting students' performance. To check the performance, our proposed method was compared with a decision tree classifier, and a comparative and analytical study is conducted on well-known students' data.

ISBN
9780986041983
Publisher
International Business Information Management Association, IBIMA
Disciplines
Keywords
  • Decision tree,
  • Multi-criteria selection,
  • Pre-processing,
  • Students' assessment,
  • Students' performance
Scopus ID
85013884565
Indexed in Scopus
Yes
Open Access
No
Citation Information
Feras Al-Obeidat and Abdallah Tubasihat. "Predicting students' performance using mutli-criteria classification: A case study" Proceedings of the 28th International Business Information Management Association Conference - Vision 2020: Innovation Management, Development Sustainability, and Competitive Economic Growth (2016) p. 1590 - 1599
Available at: http://works.bepress.com/feras-al-obeidat/41/