Temporal Interest Network for User Response Prediction
Haolin Zhou, Junwei Pan, Xinyi Zhou, Xihua Chen, Jie Jiang, Xiaofeng, Gao, Guihai Chen

TL;DR
This paper introduces a Temporal Interest Network (TIN) that effectively captures semantic-temporal correlations in user behaviors for improved response prediction in recommendation systems, demonstrating superior performance both offline and online.
Contribution
The paper proposes a novel TIN model that incorporates target-aware temporal encoding and explicit interaction mechanisms to better learn semantic-temporal correlations in user behaviors.
Findings
TIN outperforms baseline models on public datasets.
TIN achieves significant online performance improvements in Tencent's platform.
The model is successfully deployed in production since October 2023.
Abstract
User response prediction is essential in industrial recommendation systems, such as online display advertising. Among all the features in recommendation models, user behaviors are among the most critical. Many works have revealed that a user's behavior reflects her interest in the candidate item, owing to the semantic or temporal correlation between behaviors and the candidate. While the literature has individually examined each of these correlations, researchers have yet to analyze them in combination, that is, the semantic-temporal correlation. We empirically measure this correlation and observe intuitive yet robust patterns. We then examine several popular user interest models and find that, surprisingly, none of them learn such correlation well. To fill this gap, we propose a Temporal Interest Network (TIN) to capture the semantic-temporal correlation simultaneously between…
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Taxonomy
TopicsRecommender Systems and Techniques · Sentiment Analysis and Opinion Mining · Image and Video Quality Assessment
MethodsBalanced Selection · None · fail
