序列推荐中分层偏好建模的双对比变压器

Chengkai Huang, Shoujin Wang, Xianzhi Wang, L. Yao
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引用次数: 1

摘要

序列推荐系统旨在通过综合建模用户嵌入在用户-物品交互序列中的复杂偏好来预测用户可能感兴趣的后续物品。然而,现有的大多数SRSs往往基于项目ID信息对用户的单一低级偏好进行建模,而忽略了由项目属性信息(如项目类别)揭示的高级偏好。此外,他们经常利用有限的序列上下文信息来预测下一个项目,而忽略了更丰富的项目间语义关系。为此,本文提出了一种新的分层偏好建模框架,对复杂的低阶和高阶偏好动态建模,以实现准确的顺序推荐。具体而言,在该框架中,设计了一种新的双变压器模块和一种新的双对比学习方案,分别对用户的低级偏好和高级偏好进行判别学习,并有效地增强低级偏好和高级偏好的学习。此外,设计了一种新的语义增强的上下文嵌入模块,以生成更多信息的上下文嵌入,进一步提高推荐性能。在六个真实世界数据集上进行的大量实验表明,我们提出的方法优于最先进的方法,并且我们的设计具有合理性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dual Contrastive Transformer for Hierarchical Preference Modeling in Sequential Recommendation
Sequential recommender systems (SRSs) aim to predict the subsequent items which may interest users via comprehensively modeling users' complex preference embedded in the sequence of user-item interactions. However, most of existing SRSs often model users' single low-level preference based on item ID information while ignoring the high-level preference revealed by item attribute information, such as item category. Furthermore, they often utilize limited sequence context information to predict the next item while overlooking richer inter-item semantic relations. To this end, in this paper, we proposed a novel hierarchical preference modeling framework to substantially model the complex low- and high-level preference dynamics for accurate sequential recommendation. Specifically, in the framework, a novel dual-transformer module and a novel dual contrastive learning scheme have been designed to discriminatively learn users' low- and high-level preference and to effectively enhance both low- and high-level preference learning respectively. In addition, a novel semantics-enhanced context embedding module has been devised to generate more informative context embedding for further improving the recommendation performance. Extensive experiments on six real-world datasets have demonstrated both the superiority of our proposed method over the state-of-the-art ones and the rationality of our design.
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