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Matrix completion of noisy graph signals via proximal gradient minimization

机译:通过近端梯度最小化完成噪声图信号的矩阵完成

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This paper takes on the problem of recovering the missing entries of an incomplete matrix, which is known as matrix completion, when the columns of the matrix are signals that lie on a graph and the available observations are noisy. We solve a version of the problem regularized with the Laplacian quadratic form by means of the proximal gradient method, and derive theoretical bounds on the recovery error. Moreover, in order to speed up the convergence of the proximal gradient, we propose an initialization method that utilizes the structural information contained in the Laplacian matrix of the graph.
机译:当矩阵的列是位于图上的信号且可用的观测值很嘈杂时,本文提出了恢复不完整矩阵的缺失条目(称为矩阵完成)的问题。我们通过近端梯度法解决了用拉普拉斯二次型正则化的问题的一种形式,并推导了恢复误差的理论界限。此外,为了加快近端梯度的收敛速度,我们提出了一种初始化方法,该方法利用了图的拉普拉斯矩阵中包含的结构信息。

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