DocumentCode :
3536477
Title :
Noisy estimation of simultaneously structured models: Limitations of convex relaxation
Author :
Oymak, Samet ; Jalali, A. ; Fazel, Maryam ; Hassibi, Babak
Author_Institution :
California Inst. of Technol., Pasadena, CA, USA
fYear :
2013
fDate :
10-13 Dec. 2013
Firstpage :
6019
Lastpage :
6024
Abstract :
Models or signals exhibiting low dimensional behavior (e.g., sparse signals, low rank matrices) play an important role in signal processing and system identification. In this paper, we focus on models that have multiple structures simultaneously; e.g., matrices that are both low rank and sparse, arising in phase retrieval, quadratic compressed sensing, and cluster detection in social networks. We consider the estimation of such models from observations corrupted by additive Gaussian noise. We provide tight upper and lower bounds on the mean squared error (MSE) of a convex denoising program that uses a combination of regularizers to induce multiple structures. In the case of low rank and sparse matrices, we quantify the gap between the MSE of the convex program and the best achievable error, and we present a simple (nonconvex) thresholding algorithm that outperforms its convex counterpart and achieves almost optimal MSE. This paper extends prior work on a different but related problem: recovering simultaneously structured models from noiseless compressed measurements, where bounds on the number of required measurements were given. The present work shows a similar fundamental limitation exists in a statistical denoising setting.
Keywords :
AWGN; compressed sensing; convex programming; estimation theory; mean square error methods; signal denoising; sparse matrices; additive Gaussian noise; cluster detection; convex denoising program; convex relaxation; low rank matrices; mean squared error; noiseless compressed measurements; noisy estimation; nonconvex thresholding algorithm; phase retrieval; quadratic compressed sensing; regularizers; signal processing; simultaneously structured models; social networks; sparse matrices; statistical denoising setting; Estimation; Noise measurement; Signal to noise ratio; Sparse matrices; Upper bound; Vectors; compressed sensing; denoising; estimation; low rank and sparse; simultaneously structured;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Decision and Control (CDC), 2013 IEEE 52nd Annual Conference on
Conference_Location :
Firenze
ISSN :
0743-1546
Print_ISBN :
978-1-4673-5714-2
Type :
conf
DOI :
10.1109/CDC.2013.6760840
Filename :
6760840
Link To Document :
بازگشت