主催: The Japanese Society for Artificial Intelligence
会議名: 2013年度人工知能学会全国大会(第27回)
回次: 27
開催地: 富山県富山市 富山国際会議場
開催日: 2013/06/04 - 2013/06/07
This paper proposes the user modeling method that reflects user's personal values for recommender systems. Existing methods such as collaborative and content-based approach tend to be less-accurate for new users and items owing to the lack of the relation between items and users' preference. Meanwhile, personal values have been taken notice because of its significant relation to potential preferences of users. While existing recommender systems usually employ user preference of items to make recommendations, proposed method focuses on users' personal values, which mean value judgments that show what attributes users put a high priority. By analyzing the relation between ratings for an item and attributes, user's priority on each attribute is extracted as a user model that reflects user's value judgment. The proposed method is applied to customer reviews on Kakaku.com, of which results show that the attributes on which users put high priority can be modeled with less reputation information.