作者
Tomoharu Iwata, Shinji Watanabe, Takeshi Yamada, Naonori Ueda
发表日期
2009/6/26
研讨会论文
Twenty-First international joint conference on artificial intelligence
简介
We propose a new topic model for tracking timevarying consumer purchase behavior, in which consumer interests and item trends change over time. The proposed model can adaptively track changes in interests and trends based on current purchase logs and previously estimated interests and trends. The online nature of the proposed method means we do not need to store past data for current inferences and so we can considerably reduce the computational cost and the memory requirement. We use real purchase logs to demonstrate the effectiveness of the proposed method in terms of the prediction accuracy of purchase behavior and the computational cost of the inference.
引用总数
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学术搜索中的文章
T Iwata, S Watanabe, T Yamada, N Ueda - Twenty-First international joint conference on artificial …, 2009