An End-to-end Attention Transfer Network for Cross-domain Service Recommendation

Ruyu Yan, Yushun Fan
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Abstract

The number of available online services increases sharply with the development of the Internet. These services typically belong to varying service domains. To address the data-sparse issue, cross-domain recommendation techniques are proposed to transfer the information in relevant service domains to improve the recommendation effects. In this paper, we presented a novel end-to-end cross-domain service recommendation learning framework, named EATN, short for End-to-end Attention Transfer Network, which is different from most existing cross-domain step-by-step learning frameworks. To realize this end-to-end framework, we design a workflow to achieve user preferences cross-domain matching procedure. We capture fine-grained and multi-faceted user preferences by using multiple Multi-Layer Perceptron layers. To reasonably integrate multi-faceted transfer preferences, we design a service-level attention module, which learns weight based on the relevance to services. Finally, it can improve the recommendation effect of cold-start users in the target domain. Extensive experiments on the real-world Amazon dataset show the significant improvement of our proposed EATN framework.
面向跨域服务推荐的端到端注意力转移网络
随着互联网的发展,可用的在线服务数量急剧增加。这些服务通常属于不同的服务域。针对数据稀疏问题,提出了跨域推荐技术,在相关服务域中传递信息,提高推荐效果。本文提出了一种新的端到端跨域服务推荐学习框架,即端到端注意力转移网络(end-to-end Attention Transfer Network,简称EATN),它不同于现有的跨域分步学习框架。为了实现这个端到端框架,我们设计了一个工作流来实现用户偏好的跨域匹配过程。我们通过使用多个多层感知器层来捕获细粒度和多方面的用户偏好。为了合理整合多方面的转移偏好,我们设计了一个服务级关注模块,该模块根据与服务的相关性来学习权重。最后,可以提高目标域冷启动用户的推荐效果。在真实的Amazon数据集上进行的大量实验表明,我们提出的eattn框架有了显著的改进。
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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