A framework for tag-aware recommender systems |
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Affiliation: | 1. Department of Computer Science, Institute of Mathematics and Statistics, University of Sao Paulo, Rua do Matao, 1010, Cidade Universitaria, CEP 05508-090 Sao Paulo, SP, Brazil;2. Computing Institute, Federal University of Alagoas, Campus A.C. Simoes, BR 104, Norte, km 97, Cidade Universitaria, CEP 57072-970 Maceio, AL, Brazil;3. Department of Computer Systems, Institute of Mathematics and Computional Sciences, University of Sao Paulo, Avenida Trabalhador Sao-carlense, 400 Centro, CEP 13566-590 Sao Carlos, SP, Brazil;1. Nagoya Institute of Technology, Department of Computer Science, Gokisho, Showa, Nagoya, Aichi, 466-8555, Japan;2. University of the Ryukyus, Department of Electrical Engineering, Nakagami, Nishihara, Okinawa, 903-0213, Japan;1. School of Control Science and Engineering, Dalian University of Technology, Dalian City, PR China;2. Department of Electrical Computer Engineering, University of Alberta, Edmonton, AB T6R 2V4, Canada;3. Systems Research Institute, Polish Academy of Sciences, Warsaw, Poland |
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Abstract: | In social tagging system, a user annotates a tag to an item. The tagging information is utilized in recommendation process. In this paper, we propose a hybrid item recommendation method to mitigate limitations of existing approaches and propose a recommendation framework for social tagging systems. The proposed framework consists of tag and item recommendations. Tag recommendation helps users annotate tags and enriches the dataset of a social tagging system. Item recommendation utilizes tags to recommend relevant items to users. We investigate association rule, bigram, tag expansion, and implicit trust relationship for providing tag and item recommendations on the framework. The experimental results show that the proposed hybrid item recommendation method generates more appropriate items than existing research studies on a real-world social tagging dataset. |
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Keywords: | Recommendation Social tagging system Tags Hybrid framework |
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