Title :
Distributed Lossy Averaging
Author :
Su, Han-I ; El Gamal, Abbas
Author_Institution :
Dept. of Electr. Eng., Stanford Univ., Stanford, CA, USA
fDate :
7/1/2010 12:00:00 AM
Abstract :
In this paper, an information theoretic formulation of the distributed averaging problem previously studied in computer science and control is presented. We assume a network with m nodes each observing a white Gaussian noise (WGN) source. The nodes communicate and perform local processing with the goal of computing the average of the sources to within a prescribed mean squared error distortion. The network rate distortion function R* (D) for a two-node network with correlated Gaussian sources is established. A general cutset lower bound on R*(D) is established and shown to be achievable to within a factor of 2 via a centralized protocol over a star network. A lower bound on the network rate distortion function for distributed weighted-sum protocols, which is larger in order than the cutset bound by a factor of log m, is established. An upper bound on the network rate distortion function for gossip-base weighted-sum protocols, which is only log log m larger in order than the lower bound for a complete graph network, is established. The results suggest that using distributed protocols results in a factor of log m increase in order relative to centralized protocols.
Keywords :
AWGN; network theory (graphs); protocols; source coding; centralized protocol; distributed lossy averaging problem; distributed weighted-sum protocols; general cutset lower bound; gossip-base weighted-sum protocols; graph network; information theoretic formulation; lossy source coding; mean squared error distortion; network rate distortion function; star network; white Gaussian noise source; Computer errors; Computer networks; Computer science; Distributed computing; Gaussian noise; Peer to peer computing; Protocols; Rate-distortion; Source coding; Upper bound; Consensus; distributed averaging; gossip algorithms; interactive communication; lossy source coding;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2010.2048474