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Variational Bayes method for matrix factorization to two sparse factorized matrices

机译:变分贝叶斯方法分解为两个稀疏分解矩阵

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Matrix factorization is the problem of factorizing a given observed matrix into two matrices, and this can be applied to various fields in information science. We use variational Bayes method for the study of this problem. In the past study of variational Bayes analysis, multivariate Gaussian prior is used for low-rank matrices for convenience of analysis. In this article, we make another assumption for sparse matrix problem: the observation matrix is the multiplication of two sparse matrices, whose priors are exponential distributions for describing sparsity and non-negativity. Under this assumption, we obtain the analytical expression of factorized matrices with several approximations. We also conduct numerical experiment to observe the property of factorized matrices via our analysis.
机译:矩阵分解是将给定的观察矩阵分解为两个矩阵的问题,可以应用于信息科学的各个领域。我们使用变分贝叶斯方法来研究这个问题。在过去的变分贝叶斯分析研究中,为方便分析,将多元高斯先验用于低秩矩阵。在本文中,我们对稀疏矩阵问题做出另一个假设:观察矩阵是两个稀疏矩阵的乘积,其先验是用于描述稀疏性和非负性的指数分布。在此假设下,我们获得具有几个近似值的分解矩阵的解析表达式。我们还进行了数值实验,以通过我们的分析观察因子分解矩阵的性质。

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