Biased Consensus Dynamics on Regular Expander Graphs
Oindrila Deb, Arpan Mukhopadhyay

TL;DR
This paper investigates how bias influences consensus formation in distributed networks, showing that biased protocols on regular expander graphs rapidly reach consensus on the superior opinion, even with minimal initial support.
Contribution
It introduces a biased variant of popular consensus protocols, demonstrating faster convergence to the superior opinion and characterizing initial conditions and thresholds for success.
Findings
Consensus on the superior opinion is achieved in O(log n) time with high probability.
Biased protocols require fewer initial supporters of the superior opinion compared to unbiased ones.
Explicit thresholds depend on bias strength and spectral properties of the graph.
Abstract
Consensus protocols play an important role in the study of distributed algorithms. In this paper, we study the effect of bias on two popular consensus protocols, namely, the {\em voter rule} and the {\em 2-choices rule} with binary opinions. We assume that agents with opinion update their opinion with a probability strictly less than the probability with which update occurs for agents with opinion . We call opinion as the superior opinion and our interest is to study the conditions under which the network reaches consensus on this opinion. We assume that the agents are located on the vertices of a regular expander graph with vertices. We show that for the voter rule, consensus is achieved on the superior opinion in time with high probability even if system starts with only agents having the superior opinion. This is in sharp…
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Taxonomy
TopicsOpportunistic and Delay-Tolerant Networks · Distributed Control Multi-Agent Systems · Distributed systems and fault tolerance
