Consensus in the weighted voter model with noise-free and noisy observations.

IF 1.9 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Swarm Intelligence Pub Date : 2025-01-01 Epub Date: 2025-05-06 DOI:10.1007/s11721-025-00248-z
Ayalvadi Ganesh, Sabine Hauert, Emma Valla
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引用次数: 0

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-n problem, and analysed in the thermodynamic limit. We present an exact finite-population analysis of the best-of-two 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 analytical results allow us to predict the expected outcome of best-of-two 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 even if only a single agent is initialised with the better option, irrespective of the total number of agents. 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. Finally, we present bounds and approximations for the best-of-n problem.

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无噪声和有噪声的加权选民模型的一致性。
群体决策是群体机器人中的一个重要问题,在许多不同的环境和应用中都会出现。提出了一种集解n最优问题的加权选民模型,并在热力学极限下进行了分析。我们给出了完整网络拓扑和规则网络拓扑上的二选一最佳模型的精确有限总体分析。我们还提出了一个新的分析,当代理评估的选项遭受测量误差的模型。我们的分析结果使我们能够在不需要进行大量模拟或数值计算的情况下,预测群系统中二选一决策的预期结果。我们证明,即使只有一个智能体初始化为更好的选项,与智能体的总数无关,在次优解上达成共识的错误概率也在1附近。此外,如果用最佳解初始化的智能体数量趋于无穷,那么错误概率趋于零,然而与智能体总数相比,错误概率趋于零。最后,我们给出了n最优问题的边界和近似。
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来源期刊
Swarm Intelligence
Swarm Intelligence COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-ROBOTICS
CiteScore
5.70
自引率
11.50%
发文量
11
审稿时长
>12 weeks
期刊介绍: Swarm Intelligence is the principal peer-reviewed publication dedicated to reporting on research and developments in the multidisciplinary field of swarm intelligence. The journal publishes original research articles and occasional review articles on theoretical, experimental and/or practical aspects of swarm intelligence. All articles are published both in print and in electronic form. There are no page charges for publication. Swarm Intelligence is published quarterly. The field of swarm intelligence deals with systems composed of many individuals that coordinate using decentralized control and self-organization. In particular, it focuses on the collective behaviors that result from the local interactions of the individuals with each other and with their environment. It is a fast-growing field that encompasses the efforts of researchers in multiple disciplines, ranging from ethology and social science to operations research and computer engineering. Swarm Intelligence will report on advances in the understanding and utilization of swarm intelligence systems, that is, systems that are based on the principles of swarm intelligence. The following subjects are of particular interest to the journal: • modeling and analysis of collective biological systems such as social insect colonies, flocking vertebrates, and human crowds as well as any other swarm intelligence systems; • application of biological swarm intelligence models to real-world problems such as distributed computing, data clustering, graph partitioning, optimization and decision making; • theoretical and empirical research in ant colony optimization, particle swarm optimization, swarm robotics, and other swarm intelligence algorithms.
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