청취 순서 성향을 고려한 랜덤워크 음악 추천 기법과 실험 사례
Experimental Study on Random Walk Music Recommendation Considering Users’ Listening Preference Behaviors
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초록

Personalization recommendations have already proven in many areas of the e-commerce industry. For personalization recommendations, additional work such as reclassifying items is generally necessary, which requires personal information. In this study, we propose a recommendation technique that neither exploit personal information nor reclassify items. We focus on music recommendation and performed experiments with actual music listening data. Experimental analysis shows that the proposed method may result in meaningful recommendations albeit it exploits less amount of data. We analyze the appropriate number of items and present future considerations for contextual recommendation.

키워드

Music RecommendationPersonal RecommendationCollaborative FilteringMarkov ChainPattern Analysis음악 추천개인화 추천협업 필터링마르코프체인패턴 분석
제목
청취 순서 성향을 고려한 랜덤워크 음악 추천 기법과 실험 사례
제목 (타언어)
Experimental Study on Random Walk Music Recommendation Considering Users’ Listening Preference Behaviors
저자
최혜진심준호
DOI
10.7838/jsebs.2017.22.3.075
발행일
2017-08
저널명
한국전자거래학회지
22
3
페이지
75 ~ 85