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SCMF:Sparse Covariance Matrix Factorization for Collaborative Filtering

机译:SCMF:用于协作过滤的稀疏协方差矩阵分解

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Matrix factorization (MF) is a popular collaborative filtering approach for recommender systems due to its simplicity and effectiveness.Existing MF methods either assume that all latent features are uncorrelated or assume that all are correlated.To address the important issue of what structure should be imposed on the features,we investigate the covariance matrix of the latent features learned from real data.Based on the findings,we propose an MF model with a sparse covariance prior which favors a sparse yet non-diagonal covariance matrix.Not only can this reflect the semantics more faithfully,but imposing sparsity can also have a side effect of preventing overfitting.Starting from a probabilistic generative model with a sparse covariance prior,we formulate the model inference problem as a maximum a posteriori (MAP) estimation problem.The optimization procedure makes use of stochastic gradient descent and majorizationminimization.For empirical validation,we conduct experiments using the MovieLens and Netflix datasets to compare the proposed method with two strong baselines which use different priors.Experimental results show that our sparse covariance prior can lead to performance improvement.
机译:矩阵分解(MF)由于其简单性和有效性而成为推荐系统的一种流行的协作过滤方法,现有的MF方法要么假设所有潜在特征都不相关,要么假设所有潜在特征都相关,以解决应采用何种结构的重要问题。在这些特征上,我们研究了从真实数据中获得的潜在特征的协方差矩阵。基于这些发现,我们提出了一个具有稀疏协方差的MF模型,该模型倾向于使用稀疏但非对角的协方差矩阵。语义更加忠实,但是强加稀疏性也可以防止过度拟合。从先验概率稀疏的概率生成模型开始,我们将模型推断问题公式化为最大后验(MAP)估计问题。使用随机梯度下降和主化最小化。为了进行实证验证,我们使用通过将MovieLens和Netflix数据集与两个使用不同先验的强基线进行比较,实验结果表明,我们的稀疏协方差可以提高性能。

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