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Sparse signal recovery using sparse random projections.

机译:使用稀疏随机投影进行稀疏信号恢复。

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摘要

The problem of estimating a high-dimensional signal based on an incomplete set of noisy observations has broad applications. In remote sensing, network traffic measurement, and computational biology, the observation process makes it difficult or costly to obtain sample sizes larger than the ambient signal dimension. Signal recovery is in general intractable when the dimension of the signal is much larger than the number of observations. However, efficient recovery methods have been developed by imposing a sparsity constraint on the signal. There are different ways to impose sparsity, which has given rise to a diverse set of problems in sparse approximation, subset selection in regression, and graphical model selection.This thesis makes several contributions. First, we examine the role of sparsity in the measurement matrix, representing the linear observation process through which we sample the signal. We develop a fast algorithm for approximation of compressible signals based on sparse random projections, where the signal is assumed to be well-approximated by a sparse vector in an orthonormal transform. We propose a novel distributed algorithm based on sparse random projections that enables refinable approximation in large-scale sensor networks. Furthermore, we analyze the information-theoretic limits of the sparse recovery problem, and study the effect of using dense versus sparse measurement matrices. Our analysis reveals that there is a fundamental limit on how sparse we can make the measurements before the number of observations required for recovery increases significantly. Finally, we develop a general framework for deriving information-theoretic lower bounds for sparse recovery. We use these methods to obtain sharp characterizations of the fundamental limits of sparse signal recovery and sparse graphical model selection.
机译:基于不完整的噪声观测集估计高维信号的问题具有广泛的应用。在遥感,网络流量测量和计算生物学中,观察过程使获取大于环境信号尺寸的样本大小变得困难或昂贵。当信号的尺寸远大于观测值的数量时,信号恢复通常是棘手的。但是,已经通过在信号上施加稀疏约束来开发有效的恢复方法。施加稀疏性的方法多种多样,这在稀疏逼近,回归中的子集选择和图形模型选择方面引起了一系列问题。本文做出了一些贡献。首先,我们检查稀疏度在测量矩阵中的作用,代表了我们对信号进行采样的线性观察过程。我们开发了一种基于稀疏随机投影的可压缩信号逼近的快速算法,其中假定信号在正交变换中被稀疏矢量很好地逼近。我们提出了一种基于稀疏随机投影的新型分布式算法,该算法可在大规模传感器网络中实现精确的近似。此外,我们分析了稀疏恢复问题的信息理论极限,并研究了使用密集与稀疏测量矩阵的效果。我们的分析表明,在恢复所需的观察次数显着增加之前,我们如何稀疏进行测量存在一个基本限制。最后,我们开发了一个通用框架,用于推导稀疏恢复的信息理论下限。我们使用这些方法来获得稀疏信号恢复和稀疏图形模型选择的基本限制的清晰特征。

著录项

  • 作者

    Wang, Wei.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Statistics.Computer Science.Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 117 p.
  • 总页数 117
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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