User-Adapted Recommendation of Content on Mobile Devices Using Bayesian Networks
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概要
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Mobile devices, such as cellular phones and car navigation systems, are essential to daily life. People acquire necessary information and preferred content over communication networks anywhere, anytime. However, usability issues arise from the simplicity of user interfaces themselves. Thus, a recommendation of content that is adapted to a users preference and situation will help the user select content. In this paper, we describe a method to realize such a system using Bayesian networks. This user-adapted mobile system is based on a user model that provides recommendation of content (i.e., restaurants, shops, and music that are suitable to the user and situation) and that learns incrementally based on accumulated usage history data. However, sufficient samples are not always guaranteed, since a user model would require combined dependency among users, situations, and contents. Therefore, we propose the LK method for modeling, which complements incomplete and insufficient samples using knowledge data, and CPT incremental learning for adaptation based on a small number of samples. In order to evaluate the methods proposed, we applied them to restaurant recommendations made on car navigation systems. The evaluation results confirmed that our model based on the LK method can be expected to provide better generalization performance than that of the conventional method. Furthermore, our system would require much less operation than current car navigation systems from the beginning of use. Our evaluation results also indicate that learning a users individual preference through CPT incremental learning would be beneficial to many users, even with only a few samples. As a result, we have developed the technology of a system that becomes more adapted to a user the more it is used.
- 2010-05-01
著者
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Motomura Yoichi
Center For Service Research The National Institute Of Advanced Industrial Science And Technology
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IWASAKI Hirotoshi
DENSO IT LABORATORY, INC.
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MIZUNO Nobuhiro
DENSO IT LABORATORY, INC.
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HARA Kousuke
DENSO IT LABORATORY, INC.
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Iwasaki Hirotoshi
Denso It Laboratory Inc.
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Mizuno Nobuhiro
Denso It Laboratory Inc.
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Hara Kousuke
Denso It Laboratory Inc.
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Motomura Yoichi
Center for Service Research National Institute of Advanced Industrial Science and Engineering
関連論文
- User-Adapted Recommendation of Content on Mobile Devices Using Bayesian Networks
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