Denoising Long- and Short-term Interests for Sequential Recommendation

SDM Pub Date : 2024-07-20 DOI:10.1137/1.9781611978032.63
Xinyu Zhang, Beibei Li, Beihong Jin
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引用次数: 0

Abstract

User interests can be viewed over different time scales, mainly including stable long-term preferences and changing short-term intentions, and their combination facilitates the comprehensive sequential recommendation. However, existing work that focuses on different time scales of user modeling has ignored the negative effects of different time-scale noise, which hinders capturing actual user interests and cannot be resolved by conventional sequential denoising methods. In this paper, we propose a Long- and Short-term Interest Denoising Network (LSIDN), which employs different encoders and tailored denoising strategies to extract long- and short-term interests, respectively, achieving both comprehensive and robust user modeling. Specifically, we employ a session-level interest extraction and evolution strategy to avoid introducing inter-session behavioral noise into long-term interest modeling; we also adopt contrastive learning equipped with a homogeneous exchanging augmentation to alleviate the impact of unintentional behavioral noise on short-term interest modeling. Results of experiments on two public datasets show that LSIDN consistently outperforms state-of-the-art models and achieves significant robustness.
为序列推荐对长期和短期兴趣去噪
用户兴趣可以从不同的时间尺度来观察,主要包括稳定的长期偏好和不断变化的短期意向,它们的结合有利于进行全面的顺序推荐。然而,现有的工作侧重于不同时间尺度的用户建模,忽略了不同时间尺度噪声的负面影响,这阻碍了对用户实际兴趣的捕捉,也是传统的顺序去噪方法无法解决的问题。在本文中,我们提出了一种长短期兴趣去噪网络(LSIDN),它采用不同的编码器和定制的去噪策略来分别提取长期和短期兴趣,从而实现全面而稳健的用户建模。具体来说,我们采用了会话级兴趣提取和演化策略,以避免在长期兴趣建模中引入会话间行为噪声;我们还采用了配备同质交换增强的对比学习,以减轻无意行为噪声对短期兴趣建模的影响。在两个公共数据集上的实验结果表明,LSIDN 的性能始终优于最先进的模型,并具有显著的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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