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Similarity Measure Based on Hierarchical Pair-Wise Sequence

机译:基于分层配对明智序列的相似性度量

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Collaborative filtering systems have achieved great success in both research and business applications. One of the key technologies in collaborative filtering is similarity measure. Cosine-based and Pearson correlation-based methods are popular ways for similarity measure, but have low accuracy. In this paper, we propose a novel method for similarity measure, referred as hierarchical pair-wise sequence (HPWS). In HPWS, we take into account both the sequence property of user behaviors and the hierarchical property of item categories. We design a collaborative filtering recommendation system to evaluate the performance of HPWS based on the empirical data collected from a real P2P application, i.e. "byrBT" in CERNET. Experiment results show that HPWS outperforms traditional Cosine similarity and Pearson similarity measures under all scenarios.
机译:协作过滤系统在研究和商业应用中都取得了巨大的成功。协作过滤中的关键技术之一是相似性度量。基于余弦和基于Pearson相关的方法是相似性度量的常用方法,但准确性较低。在本文中,我们提出了一种用于相似性度量的新方法,称为分层逐对序列(HPWS)。在HPWS中,我们同时考虑了用户行为的序列属性和项目类别的层次结构属性。我们设计了一个协作式过滤推荐系统,可以基于从实际P2P应用程序(即CERNET中的“ byrBT”)收集的经验数据来评估HPWS的性能。实验结果表明,HPWS在所有情况下均优于传统的余弦相似度和Pearson相似度。

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