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Equivalence Principle for Optimization of Sparse Versus Low-Spread Representations for Signal Estimation in Noise

机译:噪声中信号估计的稀疏与低扩展表示优化的等效原理

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Estimation of a sparse signal representation, one with the minimum number of nonzero components, is hard. In this paper, we show that for a nontrivial set of the input data the corresponding optimization problem is equivalent to and can be solved by an algorithm devised for a simpler optimization problem. The simpler optimization problem corresponds to estimation of signals under a low-spread constraint. The goal of the two optimization problems is to minimize the Euclidian norm of the linear approximation error with an I~p penalty on the coefficients, for p = 0 (sparse) and p = 1 (low-spread), respectively. The I~0problem is hard, whereas the I~1 problem can be solved efficiently by an iterative algorithm. Here we precisely define the I~0 optimization problem, construct an associated I~1 optimization problem, and show that for a set with open interior of the input data the optimizers of the two optimization problems have the same support. The associated I~1 optimization problem is used to find the support of the I~0 optimizer. Once the support of the I~0 problem is known, the actual solution is easily found by solving a linear system of equations. However, we point out our approach does not solve the harder optimization problem for all input data and thus may fail to produce the optimal solution in some cases.
机译:很难估计稀疏的信号表示形式,即非零分量的数量最少。在本文中,我们表明,对于一组非平凡的输入数据,相应的优化问题等效于并可以通过针对更简单的优化问题设计的算法来解决。最简单的优化问题对应于在低扩展约束下的信号估计。这两个优化问题的目的是使线性近似误差的欧几里得范数最小化,系数分别为p = 0(稀疏)和p = 1(低扩展),并对系数施加I〜p罚分。 I〜0问题很难解决,而I〜1问题可以通过迭代算法有效解决。在这里,我们精确地定义了I〜0优化问题,构造了一个关联的I〜1优化问题,并表明对于输入数据内部开放的集合,两个优化问题的优化器具有相同的支持。相关的I〜1优化问题用于查找I〜0优化器的支持。一旦知道了I〜0问题的支持力,便可以通过求解线性方程组轻松找到实际的解决方案。但是,我们指出,我们的方法不能解决所有输入数据的更难的优化问题,因此在某些情况下可能无法产生最佳解决方案。

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