Affiliation:
1. LIRIS, Caude Bernard University, Lyon, France
2. French University in Egypt, Egypt
3. LaRRIS, Lebanese University, Lebanon
Abstract
The recent development of theWorldWideWeb, information, and communications technology have transformed the world and moved us into the data era resulting in an overload of data analysis. Students at high school use, most of the time, the internet as a tool to search for universities/colleges, university?s majors, and career paths that match their interests. However, selecting higher education choices such as a university major is a massive decision for students leading them, to surf the internet for long periods in search of needed information. Therefore, the purpose of this study is to assist high school students through a hybrid recommender system (RS) that provides personalized recommendations related to their interests. To reach this purpose we proposed a novel hybrid RS approach named (COHRS) that incorporates the Knowledge base (KB) and Collaborative Filtering (CF) recommender techniques. This hybrid RS approach is supported by the Casebased Reasoning (CBR) system and Ontology. Hundreds of queries were processed by our hybrid RS approach. The experiments show the high accuracy of COHRS based on two criteria namely the ?accuracy of retrieving the most similar cases? and the ?accuracy of generating personalized recommendations?. The evaluation results show the percentage of accuracy of COHRS based on many experiments as follows: 98 percent accuracy for ?retrieving the most similar cases? and 95 percent accuracy for ?generating personalized recommendations?.
Publisher
National Library of Serbia
Reference41 articles.
1. Apache Mahout Essentials. Packt Publishing. ISBN:978-1-78355-499-7. (2015)
2. Badrul M. Sarwar, Joseph A. Konstan, Al Borchers, Jon Herlocker, Brad Miller, and John Riedl. 1998. Using filtering agents to improve prediction quality in the GroupLens research collaborative filtering system. In Proceedings of the ACM conference on Computer supported cooperative work - CSCW ’98, 345-354. https://doi.org/10.1145/289444.289509. (1998)
3. Badrul Sarwar, George Karypis, Joseph Konstan,John Riedl.. Item-based Collaborative Filtering Recommendation Algorithms. (2001)
4. Basu, C., Hirsh, H. and Cohen W.. Recommendation as Classification: Using Social and Content-Based Information in Recommendation, in: Proc.the 15th National Conference on Artificial Intelligence, Madison WI 714-720. (1999)
5. Bobadilla, J., Ortega, F., Hernando, A., Bernal, J.. Acollaborative filtering approach to mitigate the new user cold start problem. Knowledge-Based Systems 26, 225-238. (2012)
Cited by
6 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献