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http://dx.doi.org/10.3745/KIPSTB.2011.18B.5.279

Contents Recommendation Method Based on Social Network  

Pei, Yun-Feng (고려대학교 컴퓨터정보학과)
Sohn, Jong-Soo (고려대학교 컴퓨터정보학과)
Chung, In-Jeong (고려대학교 컴퓨터정보학과)
Abstract
As the volume of internet and web contents have shown an explosive growth in recent years, lately contents recommendation system (CRS) has emerged as an important issue. Consequently, researches on contents recommendation method (CRM) for CRS have been conducted consistently. However, traditional CRMs have the limitations in that they are incapable of utilizing in web 2.0 environments where positions of content creators are important. In this paper, we suggest a novel way to recommend web contents of high quality using both degree of centrality and TF-IDF. For this purpose, we analyze TF-IDF and degree of centrality after collecting RSS and FOAF. Then we recommend contents using these two analyzed values. For the verification of the suggested method, we have developed the CRS and showed the results of contents recommendation. With the suggested idea we can analyze relations between users and contents on the entered query, and can consequently provide the appropriate contents to the user. Moreover, the implemented system we suggested in this paper can provide more reliable contents than traditional CRS because the importance of the role of content creators is reflected in the new system.
Keywords
Social Network; Social Network Analysis; Contents Recommendation Method; TF-IDF; FOAF; RSS;
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