JSAI2020

Presentation information

General Session

General Session » J-3 Data mining

[4K2-GS-3] Data mining: Market analysis

Fri. Jun 12, 2020 12:00 PM - 1:40 PM Room K (jsai2020online-11)

座長:熊谷雄介(博報堂)

12:40 PM - 1:00 PM

[4K2-GS-3-03] Tensor Time Series Analysis for LTV Prediction

〇Koki Kawabata1, Yasuko Matsubara1, Takato Honda1, Yusaku Imai2, Yuki Tajima2, Yasushi Sakurai1 (1. Artificial Intelligence Research Center, ISIR, Osaka University, 2. Dentsu Digital Inc.)

Keywords:Customer Lifetime Value, Topic Model, Time Series Analysis

Lifetime Value (LTV) prediction is a crucial problem for customer evaluation, where an accurate estimate of future value allows retailers to realize any successful customer relationship management strategy. Given a large purchase history, which consists of multiple attributes such as timestamp, product category, and user ID, how can we find underlying patterns and trends? How accurately can we predict user activities and their LTVs? In this paper, we propose a novel way to predict LTV, which performs multi-way mining to discover hidden topics, groups of products, and groups of users, simultaneously. The comprehensive summarization makes it possible to accomplish LTV prediction with user characteristics learned from data. Experiments on real datasets demonstrate the benefits of the proposed model, in that the model can capture interpretable topics across all aspects of the purchase history and outperforms its baseline methods.

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