Consensus in the Weighted Voter Model with Noise-Free and Noisy Observations

Research Square (Research Square)(2023)

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摘要
Abstract Collective decision-making is an important problem in swarm robotics arising in many different contexts and applications. The Weighted Voter Model has been proposed to collectively solve the best-of-$k$ problem, and analysed in the thermodynamic limit. We present an exact finite-population analysis of this model on complete as well as regular network topologies. We also present a novel analysis of this model when agent evaluations of options suffer from measurement error. Our analytic results allow us to predict the expected outcome of collective decision-making on a swarm system without having to do extensive simulations or numerical computations. We show that the error probability, of reaching consensus on a suboptimal solution, is bounded away from 1 as the number of agents tends to infinity, provided at least one agent is initialised with the best solution. Moreover, the error probability tends to zero if the number of agents initialised with the best solution tends to infinity, however slowly compared to the total number of agents.
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关键词
weighted voter model,consensus,observations,noise-free
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