DocumentCode
86661
Title
Sparse Distributed Learning Based on Diffusion Adaptation
Author
Di Lorenzo, Paolo ; Sayed, Ali H.
Author_Institution
Dept. of Inf., Electron., & Telecommun. (DIET), Sapienza Univ. of Rome, Rome, Italy
Volume
61
Issue
6
fYear
2013
fDate
15-Mar-13
Firstpage
1419
Lastpage
1433
Abstract
This article proposes diffusion LMS strategies for distributed estimation over adaptive networks that are able to exploit sparsity in the underlying system model. The approach relies on convex regularization, common in compressive sensing, to enhance the detection of sparsity via a diffusive process over the network. The resulting algorithms endow networks with learning abilities and allow them to learn the sparse structure from the incoming data in real-time, and also to track variations in the sparsity of the model. We provide convergence and mean-square performance analysis of the proposed method and show under what conditions it outperforms the unregularized diffusion version. We also show how to adaptively select the regularization parameter. Simulation results illustrate the advantage of the proposed filters for sparse data recovery.
Keywords
compressed sensing; distributed sensors; adaptive networks; compressive sensing; convex regularization; diffusion LMS strategies; diffusion adaptation; distributed estimation; regularization parameter; sparse data recovery; sparse distributed learning; Adaptation models; Adaptive systems; Algorithm design and analysis; Compressed sensing; Estimation; Least squares approximation; Vectors; Adaptive networks; compressive sensing; diffusion LMS; distributed estimation; sparse vector;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2012.2232663
Filename
6375851
Link To Document