Distributed covariance estimation in Gaussian graphical models

Ami Wiesel, Alfred O. Hero

Research output: Contribution to journalArticlepeer-review

Abstract

We consider distributed estimation of the inverse covariance matrix in Gaussian graphical models. These models factorize the multivariate distribution and allow for efficient distributed signal processing methods such as belief propagation (BP). The classical maximum likelihood approach to this covariance estimation problem, or potential function estimation in BP terminology, requires centralized computing and is computationally intensive. This motivates suboptimal distributed alternatives that tradeoff accuracy for communication cost. A natural solution is for each node to perform estimation of its local covariance with respect to its neighbors. The local maximum likelihood estimator is asymptotically consistent but suboptimal, i.e., it does not minimize mean squared estimation (MSE) error. We propose to improve the MSE performance by introducing additional symmetry constraints using averaging and pseudolikelihood estimation approaches. We compute the proposed estimates using message passing protocols, which can be efficiently implemented in large scale graphical models with many nodes. We illustrate the advantages of our proposed methods using numerical experiments with synthetic data as well as real world data from a wireless sensor network.

Original languageEnglish
Article number6051525
Pages (from-to)211-220
Number of pages10
JournalIEEE Transactions on Signal Processing
Volume60
Issue number1
DOIs
StatePublished - Jan 2012

Keywords

  • Covariance estimation
  • distributed signal processing
  • graphical models

All Science Journal Classification (ASJC) codes

  • Signal Processing
  • Electrical and Electronic Engineering

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