DocumentCode :
59625
Title :
On U-Statistics and Compressed Sensing I: Non-Asymptotic Average-Case Analysis
Author :
Lim, Felicia ; Stojanovic, Vladimir Marko
Author_Institution :
Res. Lab. of Electron., Massachusetts Inst. of Technol., Cambridge, MA, USA
Volume :
61
Issue :
10
fYear :
2013
fDate :
15-May-13
Firstpage :
2473
Lastpage :
2485
Abstract :
Hoeffding\´s U-statistics model combinatorial-type matrix parameters (appearing in CS theory) in a natural way. This paper proposes using these statistics for analyzing random compressed sensing matrices, in the non-asymptotic regime (relevant to practice). The aim is to address certain pessimisms of "worst-case" restricted isometry analyses, as observed by both Blanchard & Dossal, et. al. We show how U-statistics can obtain "average-case" analyses, by relating to statistical restricted isometry property (StRIP) type recovery guarantees. However unlike standard StRIP, random signal models are not required; the analysis here holds in the almost sure (probabilistic) sense. For Gaussian/bounded entry matrices, we show that both ℓ1-minimization and LASSO essentially require on the order of k · [log((n-k)/u) + √(2(k/n) log(n/k))] measurements to respectively recover at least 1-5u fraction, and 1-4u fraction, of the signals. Noisy conditions are considered. Empirical evidence suggests our analysis to compare well to Donoho & Tanner\´s recent large deviation bounds for ℓ0/ℓ1-equivalence, in the regime of block lengths 1000~3000 with high undersampling (50-150 measurements); similar system sizes are found in recent CS implementation. In this work, it is assumed throughout that matrix columns are independently sampled.
Keywords :
Gaussian processes; compressed sensing; computational complexity; matrix algebra; CS theory; Gaussian matrices; StRIP; U-Statistics; bounded entry matrices; combinatorial type matrix parameters; compressed sensing matrices; isometry analyses; noisy conditions; nonasymptotic average case analysis; random signal models; statistical restricted isometry property; Analytical models; Approximation methods; Compressed sensing; Noise measurement; Sparse matrices; Strips; Vectors; Approximation; compressed sensing; random matrices; u-statistics;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2013.2247598
Filename :
6463463
Link To Document :
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