Semantic relationship of contents using tensor factorization for self-growth social broadcasting
  • Kim Svetlana
  • Yoon Yong-Ik
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초록

The ability to predict the activities of users in Growth Social Broadcasting (GSB) is an important one for recommendation systems. The user activities can be represented in item of relationships involving three or more things. Such relationships can be represented as a tensor, and tensor factorization is becoming an increasingly important means for predicting users' possible activities. In this paper, we propose Self-Growth Social Broadcasting (SGSB) recommendation algorithm which help users find the articles that are interesting to read. The Self-Growth Social Broadcasting is representing the unstructured text data in the form of key concepts, synonyms and syn-sets which are all stored in the domain. The recommendation algorithm build the mind-map based on users behaviors to detect the genuine interests and predict current interest automatically and in real time by applying the thinking of relevance feedback. © 2016 IEEE.

키워드

Mind-MapRecommendation systemSemantic RelationshipSocial BroadcastingTensor FactorizationFactorizationFeedbackForecastingRecommender systemsSchematic diagramsSemanticsTensorsMind mapsRecommendation algorithmsRelevance feedbackSemantic relationshipsSocial broadcastingTensor factorizationUnstructured textsUser activityBroadcasting
제목
Semantic relationship of contents using tensor factorization for self-growth social broadcasting
저자
Kim SvetlanaYoon Yong-Ik
DOI
10.1109/ICOIN.2016.7427162
발행일
2016-03
유형
Conference Paper
저널명
International Conference on Information Networking
2016-March
페이지
472 ~ 475