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IU-PMF: Probabilistic Matrix Factorization Model Fused with Item Similarity and User Similarity

机译:IU-PMF:融合项目相似度和用户相似度的概率矩阵分解模型

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Probabilistic Matrix Factorization has been proven a very successful model for recommending because of scalability, accuracy and the ability to handle sparsity problem. However, many studies have demonstrated that PMF alone is poor to reveal local relationships which can be captured by neighborhood-aware methods. In this paper we present the IU-PMF model fusing Item Similarity and User Similarity in PMF, which combines the merits of both methods. The IU-PMF model consists of two phases: the Item and User similarity matrices computation phase not needing to be applied frequently; the fused PMF model solving phase which scales linearly with the number of observations. The IU-PMF model incorporates Item similarities and User similarities abstracted from User-Item ratings into the PMF model, which helps to overcome the often encountered problem of data sparsity, scalability and prediction quality. Experiments on three real-world datasets and the complexity analysis show that IU-PMF is scalable and outperforms several state-of-the-art methods.
机译:概率矩阵分解已被证明是一种非常成功的推荐模型,因为它具有可伸缩性,准确性和处理稀疏性问题的能力。但是,许多研究表明,仅靠PMF很难揭示可以通过邻里感知方法捕获的本地关系。在本文中,我们提出了将PMF中的项目相似性和用户相似性融合在一起的IU-PMF模型,该模型结合了这两种方法的优点。 IU-PMF模型由两个阶段组成:项目和用户相似性矩阵计算阶段不需要经常应用。融合的PMF模型求解阶段与观察次数成线性比例关系。 IU-PMF模型将项目相似性和从用户项目评级中提取的用户相似性纳入PMF模型,这有助于克服数据稀疏性,可伸缩性和预测质量方面经常遇到的问题。在三个真实世界的数据集上进行的实验和复杂性分析表明,IU-PMF具有可扩展性,并且优于几种最新方法。

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