Title :
Nearly Sharp Sufficient Conditions on Exact Sparsity Pattern Recovery
Author :
Rad, Kamiar Rahnama
Author_Institution :
Dept. of Stat., Columbia Univ., New York, NY, USA
fDate :
7/1/2011 12:00:00 AM
Abstract :
Consider the n-dimensional vector y=Xβ+ε where β ∈ BBRp has only k nonzero entries and ε ∈ BBRn is a Gaussian noise. This can be viewed as a linear system with sparsity constraints corrupted by noise, where the objective is to estimate the sparsity pattern of β given the observation vector y and the measurement matrix X. First, we derive a nonasymptotic upper bound on the probability that a specific wrong sparsity pattern is identified by the maximum-likelihood estimator. We find that this probability depends (inversely) exponentially on the difference of ||Xβ||2 and the l2 -norm of Xβ projected onto the range of columns of X indexed by the wrong sparsity pattern. Second, when X is randomly drawn from a Gaussian ensemble, we calculate a nonasymptotic upper bound on the probability of the maximum-likelihood decoder not declaring (partially) the true sparsity pattern. Consequently, we obtain sufficient conditions on the sample size n that guarantee almost surely the recovery of the true sparsity pattern. We find that the required growth rate of sample size n matches the growth rate of previously established necessary conditions.
Keywords :
Gaussian noise; decoding; maximum likelihood estimation; Gaussian ensemble; Gaussian noise; exact sparsity pattern recovery; linear system; maximum likelihood decoder; maximum likelihood estimator; nonasymptotic upper bound; sharp sufficient condition; wrong sparsity pattern; Decoding; Eigenvalues and eigenfunctions; Error probability; Mathematical model; Noise measurement; Sufficient conditions; Upper bound; Hypothesis testing; random projections; sparsity pattern recovery; subset selection; underdetermined systems of equations;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2011.2145670