Analyzing Weighted 1 Minimization for Sparse Recovery with Nonuniform Sparse ModelsThe results of this paper were presented in part at the International Symposium on Information Theory, ISIT 2009

Abstract

In this paper we introduce a nonuniform sparsity model and analyze the performance of an optimized weighted 1 minimization over that sparsity model. In particular, we focus on a model where the entries of the unknown vector fall into two sets, with entries of each set having a specific probability of being nonzero. We propose a weighted 1 minimization recovery algorithm and analyze its performance using a Grassmann angle approach. We compute explicitly the relationship between the system parameters-the weights, the number of measurements, the size of the two sets, the probabilities of being nonzero- so that when i.i.d. random Gaussian measurement matrices are used, the weighted 1 minimization recovers a randomly selected signal drawn from the considered sparsity model with overwhelming probability as the problem dimension increases. This allows us to compute the optimal weights. We demonstrate through rigorous analysis and simulations that for the case when the support of the signal can be divided into two different subclasses with unequal sparsity fractions, the optimal weighted 1 minimization outperforms the regular 1 minimization substantially. We also generalize the results to an arbitrary number of classes.

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