Generative Long-term User Interest Modeling for Click-Through Rate Prediction
Jiangli Shao, Kaifu Zheng, Hao Fang, Huimu Ye, Zhiwei Liu, Bo Zhang, Shu Han, Xingxing Wang

TL;DR
This paper introduces GenLI, a generative model for long-term user interest representation that improves CTR prediction by capturing diverse interests efficiently without relying on complex matching.
Contribution
Proposes a novel generative interest modeling framework that enhances interest diversity and retrieval efficiency for CTR prediction.
Findings
GenLI generates multiple interest distributions capturing diverse user interests.
The behavior retrieval module reduces time complexity to O(1).
GenLI achieves a better balance between accuracy and efficiency in CTR prediction.
Abstract
Modeling long-term user interests with massive historical user behaviors enhances click-through rate (CTR) prediction performance in advertising and recommendation systems. Typically, a two-stage framework is widely adopted, where a general search unit (GSU) first retrieves top- relevant behaviors towards the target item, and an exact search unit (ESU) generates interest features via tailored attention. However, current target-centered GSU would ignore other latent user interests, leading to incomplete and biased interest features. Additionally, the matching-based retrieval process in GSUs depends on the pairwise similarity score between target item and each historical behavior, which not only becomes time-consuming for online services as user behaviors continue to grow, but also overlooks the interaction information among user behaviors. To combat these problems, we propose a…
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