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Nonparametric maximum likelihood approximate message passing

机译:非参数最大似然近似消息传递

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Generalized approximate message passing (GAMP) is an effective algorithm for recovering signals from noisy linear measurements, assuming known a priori signal distributions. However, in practice, both the signal distribution and noise level are often unknown. The EM-GM-AMP algorithm integrates GAMP with the EM algorithm to simultaneously estimate the signal distribution and noise variance while recovering the signal. EM-GM-AMP is built on the assumption that the signal is drawn from a sparse Gaussian mixture. In this paper, we propose nonparametric maximum likelihood-AMP (NPML-AMP) for estimating an arbitrary signal distribution in this setting. In addition to providing more flexibility (and performance improvements), we argue that the nonparametric approach actually simplifies implementation and improves stability by leveraging approximate convexity, which is not available in the sparse Gaussian mixture formulation of EM-GM-AMP. We also propose a simplified noise variance estimator for use in conjunction with NPML-AMP (or EM-GM-AMP). A comprehensive numerical study validates the performance of NPML-AMP algorithm in reaching nearly minimum mean squared error (MMSE) under various signal distributions, noise levels, and undersampling ratios.
机译:假设已知的先验信号分布,广义近似消息传递(GAMP)是一种用于从噪声线性测量中恢复信号的有效算法。但是,实际上,信号分布和噪声水平通常都是未知的。 EM-GM-AMP算法将GAMP与EM算法集成在一起,以在恢复信号的同时估算信号分布和噪声方差。 EM-GM-AMP建立在假设信号来自稀疏高斯混合信号的基础上。在本文中,我们提出了非参数最大似然放大器(NPML-AMP),用于估计这种情况下的任意信号分布。除了提供更大的灵活性(和性能改进)之外,我们认为非参数方法实际上是通过利用近似凸度来简化实现并提高稳定性,而这在EM-GM-AMP的稀疏高斯混合公式中不可用。我们还提出了一种简化的噪声方差估计器,可与NPML-AMP(或EM-GM-AMP)结合使用。全面的数值研究验证了NPML-AMP算法在各种信号分布,噪声水平和欠采样率下达到几乎最小均方误差(MMSE)的性能。

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