Modeling Long-term User Behaviors with Diffusion-driven Multi-interest Network for CTR Prediction
Weijiang Lai, Beihong Jin, Yapeng Zhang, Yiyuan Zheng, Rui Zhao, Jian Dong, Jun Lei, Xingxing Wang

TL;DR
This paper introduces DiffuMIN, a diffusion-driven multi-interest network that models long-term user behaviors to improve CTR prediction by capturing diverse interests and generating augmented interest representations.
Contribution
The paper proposes a novel diffusion-based multi-interest modeling approach that thoroughly explores user interest space and enhances CTR prediction accuracy.
Findings
DiffuMIN outperforms existing models on public datasets.
Online A/B testing shows CTR increase of 1.52%.
The method effectively captures diverse user interests.
Abstract
CTR (Click-Through Rate) prediction, crucial for recommender systems and online advertising, etc., has been confirmed to benefit from modeling long-term user behaviors. Nonetheless, the vast number of behaviors and complexity of noise interference pose challenges to prediction efficiency and effectiveness. Recent solutions have evolved from single-stage models to two-stage models. However, current two-stage models often filter out significant information, resulting in an inability to capture diverse user interests and build the complete latent space of user interests. Inspired by multi-interest and generative modeling, we propose DiffuMIN (Diffusion-driven Multi-Interest Network) to model long-term user behaviors and thoroughly explore the user interest space. Specifically, we propose a target-oriented multi-interest extraction method that begins by orthogonally decomposing the target…
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