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Plurality in Spatial Voting Games with constant $β$ (2005.04799v3)

Published 10 May 2020 in cs.CG and cs.GT

Abstract: Consider a set $V$ of voters, represented by a multiset in a metric space $(X,d)$. The voters have to reach a decision -- a point in $X$. A choice $p\in X$ is called a $\beta$-plurality point for $V$, if for any other choice $q\in X$ it holds that $|{v\in V\mid \beta\cdot d(p,v)\le d(q,v)}|\ge\frac{|V|}{2}$. In other words, at least half of the voters ``prefer'' $p$ over $q$, when an extra factor of $\beta$ is taken in favor of $p$. For $\beta=1$, this is equivalent to Condorcet winner, which rarely exists. The concept of $\beta$-plurality was suggested by Aronov, de Berg, Gudmundsson, and Horton [TALG 2021] as a relaxation of the Condorcet criterion. Let $\beta*_{(X,d)}=\sup{\beta\mid \mbox{every finite multiset $V$ in $X$ admits a $\beta$-plurality point}}$. The parameter $\beta*$ determines the amount of relaxation required in order to reach a stable decision. Aronov et al. showed that for the Euclidean plane $\beta*_{(\mathbb{R}2,|\cdot|_2)}=\frac{\sqrt{3}}{2}$, and more generally, for $d$-dimensional Euclidean space, $\frac{1}{\sqrt{d}}\le \beta*_{(\mathbb{R}d,|\cdot|_2)}\le\frac{\sqrt{3}}{2}$. In this paper, we show that $0.557\le \beta*_{(\mathbb{R}d,|\cdot|_2)}$ for any dimension $d$ (notice that $\frac{1}{\sqrt{d}}<0.557$ for any $d\ge 4$). In addition, we prove that for every metric space $(X,d)$ it holds that $\sqrt{2}-1\le\beta*_{(X,d)}$, and show that there exists a metric space for which $\beta*_{(X,d)}\le \frac12$.

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