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Combining User-Based and Session-Based Recommendations with Recurrent Neural Networks

机译:将基于用户和基于会话的建议与递归神经网络相结合

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Recommender systems generate recommendations based on user profiles, which consist of past interactions of users with items. When user profiles are not available, session-based recommendation can be used instead to make predictions based on sequences of user clicks within short sessions. Although each approach can be used separately, it is desired to utilize both user profiles and session information, and other information such as context, when those are available. In this paper, we propose a Recurrent Neural Networks (RNNs) based method that combines different types of information to generate recommendations. Specifically, we learn user and item representations from user-item interaction data and explore a new type of RNN cells to combine global user embeddings with sequential behavior within each session to generate next item recommendations. The proposed model uses an attention mechanism to adaptively regulate the contributions of different input components based on specific situations. The model can be extended to incorporate other input, such as contextual information. Experimental results on two real-world datasets show that our method outperforms state-of-the-art baselines that use only user or session information.
机译:推荐系统根据用户个人资料生成推荐,其中包括用户与商品的过去互动。当用户配置文件不可用时,可以使用基于会话的推荐来基于短会话内的用户单击顺序进行预测。尽管每种方法可以单独使用,但是希望在可用的情况下同时利用用户配置文件和会话信息以及其他信息(例如上下文)。在本文中,我们提出了一种基于递归神经网络(RNN)的方法,该方法结合了不同类型的信息以生成建议。具体来说,我们从用户与项目的交互数据中学习用户和项目的表示形式,并探索一种新型的RNN单元,将全局用户嵌入与每个会话中的顺序行为相结合,以生成下一个项目建议。提出的模型使用注意机制根据特定情况自适应地调节不同输入成分的贡献。可以扩展模型以合并其他输入,例如上下文信息。在两个真实数据集上的实验结果表明,我们的方法优于仅使用用户或会话信息的最新基准。

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