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FISM: Factored Item Similarity Models for Top-N Recommender Systems

机译:FISM:Top-N推荐人系统的分解项目相似模型

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摘要

The effectiveness of existing top-N recommendation methods decreases as the sparsity of the datasets increases. To alleviate this problem, we present an item-based method for generating top-N recommendations that learns the item-item similarity matrix as the product of two low dimensional latent factor matrices. These matrices are learned using a structural equation modeling approach, wherein the value being estimated is not used for its own estimation. A comprehensive set of experiments on multiple datasets at three different sparsity levels indicate that the proposed methods can handle sparse datasets effectively and outperforms other state-of-the-art top-N recommendation methods. The experimental results also show that the relative performance gains compared to competing methods increase as the data gets sparser.
机译:现有的前N个推荐方法的有效性随着数据集稀疏性的增加而降低。为了缓解此问题,我们提出了一种基于项目的方法,用于生成前N个推荐,该方法将项目-项目相似度矩阵学习为两个低维潜在因子矩阵的乘积。这些矩阵是使用结构方程建模方法学习的,其中所估计的值不用于其自身的估计。在三个不同稀疏度级别上对多个数据集进行的全面实验表明,所提出的方法可以有效地处理稀疏数据集,并且优于其他最新的top-N推荐方法。实验结果还表明,与竞争方法相比,相对性能的提高随着数据的稀疏而增加。

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