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Collaborative filtering based on semantic distance among items

机译:基于项目间语义距离的协同过滤

摘要

This paper proposes a new method to compute the semantic distance among items in collaborative filtering based on k-nearest neighbors. This approach predicts the rating that a user u would give to an item i calculating the similarity between i and other items rated by u. This items' similarity is obtained using a semantic distance metric proposed in this paper. The technique exploits ontologies available on the Web through the Linked Open Data. This is possible because they have semantic descriptions, structured by links, that define a knowledge domain. The equation to calculate the semantic distance is an extension of a related work. We propose to assign weight to links to show the specificity of item's categories. Our proposal was evaluated with a movies dataset and it was shown that significant improvements can be achieved when compared to the baseline without weighted links.
机译:提出了一种新的基于k近邻的协同过滤中项目间语义距离的计算方法。这种方法可以预测用户u对商品i的评价,从而计算i与您评价的其他商品之间的相似度。使用本文提出的语义距离度量可以获得这些项目的相似性。该技术通过链接的开放数据利用Web上可用的本体。这是可能的,因为它们具有由链接构成的定义知识域的语义描述。计算语义距离的方程式是相关著作的扩展。我们建议为链接分配权重,以显示项目类别的特殊性。我们的建议是通过电影数据集进行评估的,结果表明,与没有加权链接的基线相比,可以实现显着的改进。

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