35
58

Simple Dynamics for Plurality Consensus

Abstract

We study a \emph{Plurality-Consensus} process in which each of nn anonymous agents of a communication network initially supports an opinion (a color chosen from a finite set [k][k]). Then, in every (synchronous) round, each agent can revise his color according to the opinions currently held by a random sample of his neighbors. It is assumed that the initial color configuration exhibits a sufficiently large \emph{bias} ss towards a fixed plurality color, that is, the number of nodes supporting the plurality color exceeds the number of nodes supporting any other color by ss additional nodes. The goal is having the process to converge to the \emph{stable} configuration in which all nodes support the initial plurality. We consider a basic model in which the network is a clique and the update rule (called here the \emph{3-majority dynamics}) of the process is the following: each agent looks at the colors of three random neighbors and then applies the majority rule (breaking ties uniformly). We prove that the process converges in time O(min{k,(n/logn)1/3}logn)\mathcal{O}( \min\{ k, (n/\log n)^{1/3} \} \, \log n ) with high probability, provided that scmin{2k,(n/logn)1/3}nlogns \geqslant c \sqrt{ \min\{ 2k, (n/\log n)^{1/3} \}\, n \log n}. We then prove that our upper bound above is tight as long as k(n/logn)1/4k \leqslant (n/\log n)^{1/4}. This fact implies an exponential time-gap between the plurality-consensus process and the \emph{median} process studied by Doerr et al. in [ACM SPAA'11]. A natural question is whether looking at more (than three) random neighbors can significantly speed up the process. We provide a negative answer to this question: In particular, we show that samples of polylogarithmic size can speed up the process by a polylogarithmic factor only.

View on arXiv
Comments on this paper