English

Convergence Time for Unbiased Quantized Consensus Over Static and Dynamic Networks

Systems and Control 2016-11-18 v3 Social and Information Networks

Abstract

In this paper, the question of expected time to convergence is addressed for unbiased quantized consensus on undirected connected graphs, and some strong results are obtained. The paper first provides a tight expression for the expected convergence time of the unbiased quantized consensus over general but fixed networks. It is shown that the maximum expected convergence time lies within a constant factor of the maximum hitting time of an appropriate lazy random walk, using the theory of harmonic functions for reversible Markov chains. Following this, and using electric resistance analogy of the reversible Markov chains, the paper provides a tight upper bound for the expected convergence time to consensus based on the parameters of the network. Moreover, the paper identifies a precise order of the maximum expected convergence time for some simple graphs such as line graph and cycle. Finally, the results are extended to bound the expected convergence time of the underlying dynamics in time-varying networks. Modeling such dynamics as the evolution of a time inhomogeneous Markov chain, the paper derives a tight upper bound for expected convergence time of the dynamics using the spectral representation of the networks. This upper bound is significantly better than earlier results for the quantized consensus problem over time-varying graphs.

Keywords

Cite

@article{arxiv.1403.4109,
  title  = {Convergence Time for Unbiased Quantized Consensus Over Static and Dynamic Networks},
  author = {Seyed Rasoul Etesami and Tamer Basar},
  journal= {arXiv preprint arXiv:1403.4109},
  year   = {2016}
}

Comments

The paper is accepted in IEEE Transactions on Automatic Control and will appear soon

R2 v1 2026-06-22T03:28:16.337Z