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A Constrained Spreading Activation Approach to Collaborative Filtering

机译:协同过滤的受限扩展激活方法

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摘要

In this paper, we describe a collaborative filtering approach that aims to use features of users and items to better represent the problem space and to provide better recommendations to users. The goal of the work is to show that a graph-based representation of the problem domain, and a constrained spreading activation approach to effect retrieval, has as good, or better, performance than a traditional collaborative filtering approach using Pearson Correlation. However, in addition, the representation and approach proposed can be easily extended to incorporate additional information.
机译:在本文中,我们描述了一种协作过滤方法,旨在利用用户和项的功能更好地表示问题空间并向用户提供更好的建议。这项工作的目的是证明问题域的基于图的表示以及用于影响检索的约束扩展激活方法具有比使用Pearson Correlation的传统协作过滤方法更好或更好的性能。但是,此外,建议的表示形式和方法可以轻松扩展以包含其他信息。

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