Research Article

NEW RECOMMENDER SYSTEM USING NAIVE BAYES FOR E-LEARNING

Volume: 5 September 1, 2016
EN

NEW RECOMMENDER SYSTEM USING NAIVE BAYES FOR E-LEARNING

Abstract

Coming into prominence at the present time, e-learning is a great opportunity for learners. It provides tremendous assets most valuable of which is distance free learning. Besides, there is a great deal of e-learning resources on the web that causes information overload. Accordingly, it turns into a requisite that you ask for recommendation so as to find the resource you surely need. There are readily available recommendation services arranged for that purpose. Such systems have various rating systems; furthermore users tend to rate the materials in different manners. Our goal with this paper is to generate confidential referrals thanks to Naive Bayesian algorithm for e-learning materials rated multifariously by learners. We also researched the effects of several data preprocessing techniques on achieving this goal. 

Keywords

References

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Details

Primary Language

English

Subjects

-

Journal Section

Research Article

Authors

Tansu Temel This is me

Publication Date

September 1, 2016

Submission Date

-

Acceptance Date

-

Published in Issue

Year 1970 Volume: 5

APA
Ozcan, M., & Temel, T. (2016). NEW RECOMMENDER SYSTEM USING NAIVE BAYES FOR E-LEARNING. The Eurasia Proceedings of Educational and Social Sciences, 5, 309-312. https://izlik.org/JA28RN52JT