DocumentCode
1764764
Title
Diffusion LMS Over Multitask Networks
Author
Jie Chen ; Richard, Cedric ; Sayed, Ali H.
Author_Institution
Univ. de Nice Sophia-Antipolis, Nice, France
Volume
63
Issue
11
fYear
2015
fDate
42156
Firstpage
2733
Lastpage
2748
Abstract
The diffusion LMS algorithm has been extensively studied in recent years. This efficient strategy allows to address distributed optimization problems over networks in the case where nodes have to collaboratively estimate a single parameter vector. Nevertheless, there are several problems in practice that are multitask-oriented in the sense that the optimum parameter vector may not be the same for every node. This brings up the issue of studying the performance of the diffusion LMS algorithm when it is run, either intentionally or unintentionally, in a multitask environment. In this paper, we conduct a theoretical analysis on the stochastic behavior of diffusion LMS in the case where the single-task hypothesis is violated. We analyze the competing factors that influence the performance of diffusion LMS in the multitask environment, and which allow the algorithm to continue to deliver performance superior to non-cooperative strategies in some useful circumstances. We also propose an unsupervised clustering strategy that allows each node to select, via adaptive adjustments of combination weights, the neighboring nodes with which it can collaborate to estimate a common parameter vector. Simulations are presented to illustrate the theoretical results, and to demonstrate the efficiency of the proposed clustering strategy.
Keywords
least mean squares methods; pattern clustering; diffusion LMS algorithm; distributed optimization problem; multitask network; noncooperative strategy; single parameter vector; single-task hypothesis; stochastic behavior; unsupervised clustering strategy; Algorithm design and analysis; Context; Cost function; Estimation; Least squares approximations; Signal processing algorithms; Vectors; Adaptive clustering; collaborative processing; diffusion strategy; distributed optimization; multitask learning; stochastic performance;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2015.2412918
Filename
7060710
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