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The Dynamics of Message Passing on Dense Graphs, with Applications to Compressed Sensing

机译:密集图上消息传递的动力学及其在压缩感知中的应用

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摘要

“Approximate message passing” (AMP) algorithms have proved to be effective in reconstructing sparse signals from a small number of incoherent linear measurements. Extensive numerical experiments further showed that their dynamics is accurately tracked by a simple one-dimensional iteration termed state evolution. In this paper, we provide rigorous foundation to state evolution. We prove that indeed it holds asymptotically in the large system limit for sensing matrices with independent and identically distributed Gaussian entries. While our focus is on message passing algorithms for compressed sensing, the analysis extends beyond this setting, to a general class of algorithms on dense graphs. In this context, state evolution plays the role that density evolution has for sparse graphs. The proof technique is fundamentally different from the standard approach to density evolution, in that it copes with a large number of short cycles in the underlying factor graph. It relies instead on a conditioning technique recently developed by Erwin Bolthausen in the context of spin glass theory.
机译:事实证明,“近似消息传递”(AMP)算法可有效地从少量非相干线性测量中重建稀疏信号。大量的数值实验进一步表明,它们的动力学可以通过称为状态演化的简单一维迭代来精确跟踪。在本文中,我们为国家发展提供了严格的基础。我们证明,在具有独立且均布高斯项的矩阵的检测中,它确实在渐进的系统极限中渐近成立。尽管我们的重点是用于压缩感知的消息传递算法,但分析超出了此设置,扩展到了密集图上的一类常规算法。在这种情况下,状态演化扮演着密度演化对于稀疏图的角色。证明技术从根本上不同于密度演化的标准方法,因为它可以处理潜在因子图中的大量短周期。相反,它依赖于Erwin Bolthausen最近在旋转玻璃理论的背景下开发的调节技术。

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