Consensus in the Presence of Multiple Opinion Leaders: Effect of Bounded Confidence
Ranga Dabarera, Kamal Premaratne, Manohar N. Murthi, and Dilip Sarkar

TL;DR
This paper investigates how agents in dynamic networks reach consensus or form opinion clusters when updating their beliefs based on bounded confidence and evidence exchange, using Dempster-Shafer theory.
Contribution
It introduces a framework combining bounded confidence with Dempster-Shafer evidence theory to analyze opinion dynamics and proves conditions for consensus and clustering.
Findings
Consensus can be achieved under certain network conditions.
Multiple opinion leaders lead to opinion clustering rather than full consensus.
Simulation results support theoretical findings.
Abstract
The problem of analyzing the performance of networked agents exchanging evidence in a dynamic network has recently grown in importance. This problem has relevance in signal and data fusion network applications and in studying opinion and consensus dynamics in social networks. Due to its capability of handling a wider variety of uncertainties and ambiguities associated with evidence, we use the framework of Dempster-Shafer (DS) theory to capture the opinion of an agent. We then examine the consensus among agents in dynamic networks in which an agent can utilize either a cautious or receptive updating strategy. In particular, we examine the case of bounded confidence updating where an agent exchanges its opinion only with neighboring nodes possessing 'similar' evidence. In a fusion network, this captures the case in which nodes only update their state based on evidence consistent with the…
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