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Deeply Fusing Reviews and Contents for Cold Start Users in Cross-Domain Recommendation Systems

机译:深度融合的审查和内容在跨域推荐系统中的冷启动用户

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As one promising way to solve the challenging issues of data sparsity and cold start in recommender systems, cross-domain recommendation has gained increasing research interest recently. Cross-domain recommendation aims to improve the recommendation performance by means of transferring explicit or implicit feedback from the auxiliary domain to the target domain. Although the side information of review texts and item contents has been proven to be useful in recommendation, most existing works only use one kind of side information and cannot deeply fuse this side information with ratings. In this paper, we propose a Review and Content based Deep Fusion Model named RC-DFM for cross-domain recommendation. We first extend Stacked Denoising Autoencoders (SDAE) to effectively fuse review texts and item contents with the rating matrix in both auxiliary and target domains. Through this way, the learned latent factors of users and items in both domains preserve more semantic information for recommendation. Then we utilize a multi-layer perceptron to transfer user latent factors between the two domains to address the data sparsity and cold start issues. Experimental results on real datasets demonstrate the superior performance of RC-DFM compared with state-of-the-art recommendation methods.
机译:作为解决数据稀疏和冷启动的挑战性问题的有希望的方法,跨领域推荐最近获得了越来越多的研究兴趣。跨域建议旨在通过将辅助域的显式或隐式反馈从辅助域传输到目标域来提高推荐性能。虽然审查文本和物品内容的方面信息已被证明在推荐中有用,但大多数现有工程仅使用一种方面信息,并不能深入了解具有评级的侧面信息。在本文中,我们提出了一种名为RC-DFM的基于审查和基于深度融合模型的跨域推荐。我们首先扩展堆叠的去噪自动化器(SDAE),以在辅助和目标域中使用评级矩阵有效地熔化审查文本和项目内容。通过这种方式,两个域中的用户和物品的学习潜在因素保留了更多的语义信息。然后我们利用多层的Perceptron来转移两个域之间的用户潜在因子,以解决数据稀疏性和冷启动问题。实验结果对实时数据集展示了RC-DFM与最先进的推荐方法相比的卓越性能。

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