TWIN: TWo-stage Interest Network for Lifelong User Behavior Modeling in CTR Prediction at Kuaishou
Jianxin Chang, Chenbin Zhang, Zhiyi Fu, Xiaoxue Zang, Lin Guan, Jing, Lu, Yiqun Hui, Dewei Leng, Yanan Niu, Yang Song, Kun Gai

TL;DR
This paper introduces TWIN, a two-stage interest network for lifelong user behavior modeling in CTR prediction, ensuring consistency in relevance metrics between stages to improve accuracy.
Contribution
The paper proposes a novel TWIN framework with a consistency-preserved GSU and an efficient attention mechanism to enhance relevance modeling in lifelong user behavior analysis.
Findings
Significant improvement in CTR prediction accuracy.
Effective extension of attention mechanisms to longer behavior sequences.
Enhanced computational efficiency in behavior relevance scoring.
Abstract
Life-long user behavior modeling, i.e., extracting a user's hidden interests from rich historical behaviors in months or even years, plays a central role in modern CTR prediction systems. Conventional algorithms mostly follow two cascading stages: a simple General Search Unit (GSU) for fast and coarse search over tens of thousands of long-term behaviors and an Exact Search Unit (ESU) for effective Target Attention (TA) over the small number of finalists from GSU. Although efficient, existing algorithms mostly suffer from a crucial limitation: the \textit{inconsistent} target-behavior relevance metrics between GSU and ESU. As a result, their GSU usually misses highly relevant behaviors but retrieves ones considered irrelevant by ESU. In such case, the TA in ESU, no matter how attention is allocated, mostly deviates from the real user interests and thus degrades the overall CTR prediction…
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Taxonomy
TopicsRecommender Systems and Techniques · Human Mobility and Location-Based Analysis
