Title
A personalized auxiliary material recommendation system based on learning style on Facebook applying an artificial bee colony algorithm
Abstract
Facebook is currently the most popular social networking site in the world, providing an interactive platform that enables users to contact friends and other social groups, as well as post a large number of photos, videos, and links. Recently, many studies have investigated the effects of using Facebook on various aspects of education, and it has been used as a learning platform for sharing auxiliary materials. However, not all of the auxiliary materials posted may conform to the individual learning styles and abilities of each user. This study thus proposes a personalized auxiliary material recommendation system based on the degree of difficulty of the auxiliary materials, individual learning styles, and the specific course topics. An artificial bee colony algorithm is implemented to optimize the system. The results indicate that this method is superior to other schemes, and improves the execution time and accuracy of the recommendation system in an efficient manner.
Year
DOI
Venue
2012
10.1016/j.camwa.2012.03.098
Computers & Mathematics with Applications
Keywords
Field
DocType
individual learning style,execution time,artificial bee colony algorithm,social group,recommendation system,personalized auxiliary material recommendation,auxiliary material,popular social networking site,efficient manner,interactive platform
Social group,Recommender system,Artificial bee colony algorithm,Virtual learning environment,World Wide Web,Mathematical optimization,Social network,Human–computer interaction,Execution time,Mathematics,Individual learning
Journal
Volume
Issue
ISSN
64
5
0898-1221
Citations 
PageRank 
References 
16
0.59
19
Authors
4
Name
Order
Citations
PageRank
Chia-Cheng Hsu1465.33
Hsin-Chin Chen2683.76
Kuo-Kuang Huang3181.17
Yueh-Min Huang42455278.09