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Recommendation using neighborhood methods with preference-relation-based similarity

机译:使用具有基于偏好关系的相似性的邻域方法进行推荐

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摘要

Selecting appropriate items from a list consisting of a large number of items provided by a product website can be difficult and time-consuming for the potential customers. The development of recommender systems should be an important solution that will help users to select items easily according to their preferences. For recommender systems, the main aim of the popular collaborative filtering approaches is to recommend items that users with similar preferences have liked in the past. Because there is a certain degree to which one alternative is not worse than another in decision making, it would be interesting to make further use of the preference relation to design a similarity measure by measuring the overall strength of one user’s preference over that of another. The proposed similarity of one user to another user is therefore dependent on the strength of the preference of the former over the latter. In contrast to traditional similarity measures for neighborhood methods in collaborative filtering, the proposed preference-relation-based similarity is not symmetric for any two users. Experimental results have demonstrated that the generalization ability of the proposed multi-criteria neighborhood method performs well in comparison to other single-criterion and multi-criteria neighborhood methods.
机译:从由产品网站提供的大量项目组成的列表中选择适当的项目对于潜在客户而言可能既困难又耗时。推荐系统的开发应该是一个重要的解决方案,它将帮助用户根据自己的喜好轻松选择项目。对于推荐系统,流行的协作过滤方法的主要目的是推荐具有相似偏好的用户过去喜欢的项目。由于在某种程度上某个选择在决策上不会比另一种差,因此有趣的是,通过测量一个用户的偏好相对于另一个用户的偏好,进一步利用偏好关系来设计相似性度量。因此,一个用户与另一个用户的拟议相似性取决于前者相对于后者的偏好强度。与协作过滤中邻域方法的传统相似性度量方法相比,所提出的基于偏好关系的相似性对于任何两个用户都不对称。实验结果表明,与其他单准则和多准则邻域方法相比,该多准则邻域方法的泛化性能良好。

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