A Co-Attention Model with Sequential Behaviors and Side Information for Session- based Recommendation

Lin Li, Yuliang Shi, Kun Zhang, Yongjian Ren
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引用次数: 2

Abstract

Session-based recommendation aims to recommend the next item a user might be interested in given limited session information, e.g., only clicks are available. Existing researches usually use the RNN-based method or combine user long-term and current session interests to learn certain user preferences. However, due to the uncertainty of user behaviors and the limited behavior information, these methods may lose information of the relevant behavioral features and introduce some noise of unrelated behaviors. For online platforms, such as knowledge base platforms, these items are not isolated but connected with each other. We can use the correlation between items to capture the potential long-distance interests of the user. Therefore, in this paper, we propose a co-attention model with sequential behaviors and side information to obtain a complete representation of user's preferences. For obtaining relevant side information outside the session, we aggregate the corresponding entities and relations of each item to get the representation of the neighborhood information. Finally, extensive experiments are carried out on two real datasets, and the experimental results demonstrate the validity of our model. In particular, the proposed model performs well in cold start scenarios and is well interpreted for the recommended results.
基于会话的推荐中具有顺序行为和侧信息的共同注意模型
基于会话的推荐旨在在给定有限的会话信息(例如,只有点击可用)的情况下推荐用户可能感兴趣的下一个项目。现有的研究通常使用基于rnn的方法,或者结合用户的长期和当前会话兴趣来了解用户的某些偏好。然而,由于用户行为的不确定性和行为信息的有限性,这些方法可能会丢失相关的行为特征信息,并引入一些无关行为的噪声。对于网络平台,比如知识库平台,这些项目不是孤立的,而是相互联系的。我们可以利用物品之间的相关性来捕捉用户潜在的远距离兴趣。因此,在本文中,我们提出了一个具有顺序行为和侧信息的共同注意模型,以获得用户偏好的完整表示。为了获得会话外的相关侧信息,我们将每个条目对应的实体和关系进行聚合,得到邻域信息的表示。最后,在两个真实数据集上进行了大量的实验,实验结果验证了模型的有效性。特别是,所提出的模型在冷启动场景中表现良好,并且可以很好地解释推荐的结果。
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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