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Phase diagram of matrix compressed sensing

机译:矩阵压缩感测的相图

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In the problem of matrix compressed sensing, we aim to recover a low-rank matrix from a few noisy linear measurements. In this contribution, we analyze the asymptotic performance of a Bayes-optimal inference procedure for a model where the matrix to be recovered is a product of random matrices. The results that we obtain using the replica method describe the state evolution of the Parametric Bilinear Generalized Approximate Message Passing (P-BiG-AMP) algorithm, recently introduced in J. T. Parker and P. Schniter [IEEE J. Select. Top. Signal Process. 10, 795 (2016)]. We show the existence of two different types of phase transition and their implications for the solvability of the problem, and we compare the results of our theoretical analysis to the numerical performance reached by P-BiG-AMP. Remarkably, the asymptotic replica equations for matrix compressed sensing are the same as those for a related but formally different problem of matrix factorization.
机译:在矩阵压缩感测的问题中,我们的目标是从一些嘈杂的线性测量中恢复低秩矩阵。 在这一贡献中,我们分析了贝叶斯最佳推理过程的渐近性能,了解要恢复的矩阵的模型是随机矩阵的乘积。 我们使用副本方法获得的结果描述了在J.T.Parker和P. Schniter中最近引入的参数化Bilinear广义近似消息传递(P-BIG-AMP)算法的状态演变。 最佳。 信号过程。 10,795(2016)]。 我们展示了两种不同类型的阶段转型及其对问题的可解的影响,并将我们理论分析的结果与P-Big-AMP达到的数值进行比较。 值得注意的是,用于矩阵压缩感测的渐近复制方程与矩阵分组的相关但正式不同的问题的渐近复制方程相同。

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