Discrete Collective Estimation in Swarm Robotics with Ranked Voting Systems

Qihao Shan, Alexander Heck, Sanaz Mostaghim
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引用次数: 2

Abstract

The best-of-n problem has been a popular research topic for understanding collective decision-making in recent years. Researchers aim to enable a swarm of agents to collectively converge to a single opinion out of a series of potential options, using only local interactions. In this paper, we investigate the viability of decision-making via majority rule using ranked voting systems in multi-option scenarios where n>2. We focus on two ranked voting systems, single transferable vote (STV) and Borda count (BC). The proposed algorithms are tested in a discrete collective estimation scenario, and compared against two benchmark algorithms, direct comparison (DC) and majority rule using first-past-the-post voting (FPTP). We have analyzed the experimental results, focusing on the trade-off between accuracy and speed in decision-making. We have concluded that ranked voting systems can significantly improve the performances of collective decision-making strategies in multi-option scenarios. Our experiments show that BC is the best performing algorithm in the studied scenario.
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基于排序投票系统的群体机器人离散集体估计
近年来,最优问题一直是理解集体决策的热门研究课题。研究人员的目标是使一群智能体仅使用局部交互,就能从一系列潜在选项中集体收敛到一个单一的意见。在本文中,我们研究了在n>2的多选项场景下,使用排名投票系统进行多数决决策的可行性。我们重点研究了两种排名投票系统,即单一可转移投票(STV)和博尔达计数(BC)。提出的算法在一个离散的集体估计场景中进行了测试,并与两种基准算法进行了比较,直接比较(DC)和使用简单多数制投票(FPTP)的多数决规则。我们对实验结果进行了分析,重点关注决策的准确性和速度之间的权衡。我们的结论是,在多选项场景下,排名投票系统可以显著提高集体决策策略的性能。我们的实验表明,BC是研究场景中性能最好的算法。
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