DocumentCode :
1388322
Title :
On the Error of Estimating the Sparsest Solution of Underdetermined Linear Systems
Author :
Babaie-Zadeh, Massoud ; Jutten, Christian ; Mohimani, Hosein
Author_Institution :
Electr. Eng. Dept., Sharif Univ. of Technol., Tehran, Iran
Volume :
57
Issue :
12
fYear :
2011
Firstpage :
7840
Lastpage :
7855
Abstract :
Let A be an n × m matrix with m >; n, and suppose that the underdetermined linear system As = x admits a sparse solution S0 for which ||S0||0 <; 1/2 spark( A). Such a sparse solution is unique due to a well-known uniqueness theorem. Suppose now that we have somehow a solution ŝ as an estimation of s0, and suppose that ŝ is only "approximately sparse," that is, many of its components are very small and nearly zero, but not mathematically equal to zero. Is such a solution necessarily close to the true sparsest solution? More generally, is it possible to construct an upper bound on the estimation error ||ŝ - s0||2 without knowing S0? The answer is positive, and in this paper, we construct such a bound based on minimal singular values of submatrices of A. We will also state a tight bound, which is more complicated, but besides being tight, enables us to study the case of random dictionaries and obtain probabilistic upper bounds. We will also study the noisy case, that is, where x = As + n. Moreover, we will see that where ||s0 ||0 grows, to obtain a predetermined guaranty on the maximum of ||ŝ - s0 ||2, ŝ is needed to be sparse with a better approximation. This can be seen as an explanation to the fact that the estimation quality of sparse recovery algorithms degrades where ||s0||0 grows.
Keywords :
linear systems; signal processing; sparse matrices; sparse recovery algorithms; sparsest solution estimation; underdetermined linear systems; uniqueness theorem; Approximation methods; Linear systems; Noise measurement; Upper bound; Vectors; Atomic decomposition; blind source separation (BSS); compressive sensing (CS); overcomplete signal representation; sparse component analysis (SCA); sparse decomposition; sparse source separation;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2011.2170129
Filename :
6094250
Link To Document :
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