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Hybrid immunizing solution for job recommender system 被引量:4
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作者 Shaha AL-OTAIBI Mourad YKHLEF 《Frontiers of Computer Science》 SCIE EI CSCD 2017年第3期511-527,共17页
Two traditional recommendation techniques, content-based and collaborative filtering (CF), have been widely used in a broad range of domain areas. Both meth- ods have their advantages and disadvantages, and some of ... Two traditional recommendation techniques, content-based and collaborative filtering (CF), have been widely used in a broad range of domain areas. Both meth- ods have their advantages and disadvantages, and some of the defects can be resolved by integrating both techniques in a hybrid model to improve the quality of the recommendation. In this article, we will present a problem-oriented approach to design a hybrid immunizing solution for job recommen- dation problem from applicant's perspective. The proposed approach aims to recommend the best chances of opening jobs to the applicant who searches for job. It combines the artificial immune system (AIS), which has a powerful explo- ration capability in polynomial time, with the collaborative filtering, which can exploit the neighbors' interests. We will discuss the design issues, as well as the hybridization process that should be applied to the problem. Finally, experimental studies are conducted and the results show the importance of our approach for solving the job recommendation problem. 展开更多
关键词 CONTENT-BASED collaborative filtering (CF) hy- bridization computational intelligence (CI) artificial im- mune system (AIS) clonal selection correlation-based simi- larity
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