Recommender System for Student Academic Performance Based on Personality and Informal Learning

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International Journal of Computer Applications
© 2011 by IJCA Journal
Volume 33 - Number 7
Year of Publication: 2011
Authors:
S.Dhanaraj
A.Ramesh
S.Suresh Kumar
10.5120/4034-5775

S.Dhanaraj, A.Ramesh and S.Suresh Kumar. Article: Recommender System for Student Academic Performance Based on Personality and Informal Learning. International Journal of Computer Applications 33(7):30-36, November 2011. Full text available. BibTeX

@article{key:article,
	author = {S.Dhanaraj and A.Ramesh and S.Suresh Kumar},
	title = {Article: Recommender System for Student Academic Performance Based on Personality and Informal Learning},
	journal = {International Journal of Computer Applications},
	year = {2011},
	volume = {33},
	number = {7},
	pages = {30-36},
	month = {November},
	note = {Full text available}
}

Abstract

Educational Data Mining (EDM) mainly focuses on educational objectives like students’ academic performance analysis based on personality and informal learning in formal learning environment. The primary objective is to identify the outcome of informal learning style (library and ICT) in formal learning environment. The secondary objectives are analyzing the students’ personalities and purpose of resource utilization, identifying the resource usage level and etc. Eynseck Personality Questionnaire (EPQ) is used to classify the students’ personality. Resource Utilization scale and Likert scale are used to measure the utilization of resource usage. Criterion Reference Model is used to classify the students’ academic performance. Association rule is used to identify the frequent patterns among the set of attributes based on interesting measures. Multilayer perception technique provides the classification of confusion matrix result by applying cross-validation. This experiment can be used to improve the students’ intellectual capability and understanding the subjects. This analysis can be used to predict the students’ academic performance and the recommender system for students and management to improve the educative style of informal learning in formal learning environment and resource facilities.

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