Renqi Jia, Xu Bai, Xiaofei Zhou, Shirui Pan
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引用次数: 1

摘要

通过历史用户交互预测用户偏好的顺序推荐成为推荐领域最受欢迎的任务之一。现有的方法集中于用户在暴露项之间的序列特征,取得了较好的效果。然而,它们仅依靠单项预测优化来学习数据表示,忽略了上下文数据和序列数据之间的关联。在本文中,我们提出了一种新的基于自监督学习的顺序推荐网络(SSLRN),该网络通过对比学习数据相关性来促进用户和项目的数据表示。我们设计了两个辅助的对比学习任务来规范基于互信息最大化(MIM)的用户和项目表示。其中,项目对比学习利用序列-项目MIM捕获序列对比特征,用户对比学习利用用户-项目MIM对用户潜在表征进行正则化。我们在五个真实数据集上评估了我们的模型,实验结果表明,所提出的框架显著且始终优于最先进的顺序推荐技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Self-Supervised Learning Framework for Sequential Recommendation
Sequential recommendation that aims to predict user preference with historical user interactions becomes one of the most popular tasks in the recommendation area. The existing methods concentrated on user's sequential features among exposed items have achieved good performance. However, they only rely on single item prediction optimization to learn data representation, which ignores the association between context data and sequence data. In this paper, we propose a novel self-supervised learning based sequential recommendation network (SSLRN), which contrastively learns data correlation to promote data representation of users and items. We design two auxiliary contrastive learning tasks to regularize user and item representation based on mutual information maximization (MIM). In particular, the item contrastive learning captures sequential contrast feature with sequence-item MIM, and the user contrastive learning regularizes user latent representation with user-item MIM. We evaluate our model on five real-world datasets and the experimental results show that the proposed framework significantly and consistently outperforms state-of-the-art sequential recommendation techniques.
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