Neural Attentive Cross-Domain Recommendation

Dimitrios Rafailidis, F. Crestani
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引用次数: 2

Abstract

Nowadays, users open multiple accounts on social media platforms and e-commerce sites, expressing their personal preferences on different domains. However, users' behaviors change across domains, depending on the content that users interact with, such as movies, music, clothing and retail products. The main challenge is how to capture users' complex preferences when generating cross-domain recommendations, that is exploiting users' preferences from source domains to generate recommendations in a target domain. In this study, we propose a Neural Attentive Cross-domain model, namely NAC. We design a neural architecture, to carefully transfer the knowledge of user preferences across domains by taking into account the cross-domain latent effects of multiple source domains on users' selections in a target domain. In addition, we introduce a cross-domain behavioral attention mechanism to adaptively perform the weighting of users' preferences from the source domains, and consequently generate accurate cross-domain recommendations. Our experiments on ten cross-domain recommendation tasks show that the proposed NAC model achieves higher recommendation accuracy than other state-of-the-art methods for both ordinary and cold-start users. Furthermore, we study the effect of the proposed cross-domain behavioral attention mechanism and show that it is a key factor to our model's performance.
神经关注跨领域推荐
如今,用户在社交媒体平台和电子商务网站上开设多个账户,表达他们在不同领域的个人喜好。然而,用户的行为在不同领域会发生变化,这取决于用户与之交互的内容,比如电影、音乐、服装和零售产品。主要的挑战是如何在生成跨域推荐时捕获用户的复杂偏好,即利用来自源域的用户偏好来生成目标域中的推荐。在这项研究中,我们提出了一个神经注意力跨领域模型,即NAC。我们设计了一个神经结构,通过考虑多个源域对用户在目标域中的选择的跨域潜在影响,仔细地跨域传递用户偏好的知识。此外,我们引入了一种跨域行为注意机制,自适应地从源域对用户的偏好进行加权,从而生成准确的跨域推荐。我们在10个跨域推荐任务上的实验表明,对于普通用户和冷启动用户,所提出的NAC模型都比其他最先进的方法获得了更高的推荐精度。此外,我们研究了所提出的跨领域行为注意机制的影响,并表明它是影响模型性能的关键因素。
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