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Transfer collaborative filtering from multiple sources via consensus regularization

机译:通过共识正则化转移来自多个来源的协同滤波

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摘要

Collaborative filtering is one of the most successful approaches to build recommendation systems. Recently, transfer learning has been applied to recommendation systems for incorporating information from external sources. However, most existing transfer collaborative filtering algorithms tend to transfer knowledge from one single source domain. Rich information is available in many source domains, which can better complement the data in the target domain than that from a single source. However, it is common to get inconsistent information from different sources. To this end, we proposed a TRAnsfer collaborative filtering framework from multiple sources via ConsEnsus Regularization, called TRACER for short. The TRACER framework handles the information inconsistency with a consensus regularization, which enforces the outputs from multiple sources to converge. In addition, our algorithm is to learn and transfer knowledge at the same time while most of the traditional transfer learning algorithms are to learn knowledge first and then transfer it. Experiments conducted on two real-world data sets validate the effectiveness of the proposed algorithm. (C) 2018 Elsevier Ltd. All rights reserved.
机译:协作过滤是构建推荐系统的最成功的方法之一。最近,转移学习已应用于包含从外部来源的信息的推荐系统。然而,大多数现有的转移协作滤波算法倾向于从一个源域传输知识。许多源域中有丰富的信息,可以更好地补充目标域中的数据,而不是从单个源之间的数据。但是,通常可以获得不同来源的不一致信息。为此,我们提出了通过共识正则化从多个来源转移协作过滤框架,称为示踪剂。 Tracer Framework处理信息不一致与共识正常化,这强制来自多个源的输出来收敛。此外,我们的算法是在同时学习和转移知识,而大多数传统的传输学习算法首先学习知识,然后转移它。在两个真实数据集上进行的实验验证了所提出的算法的有效性。 (c)2018年elestvier有限公司保留所有权利。

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