论文标题
解决最佳度量失真猜想
Resolving the Optimal Metric Distortion Conjecture
论文作者
论文摘要
我们研究以下度量失真问题:在同一度量空间中有两组有限的积分,$ v $和$ c $,我们的目标是在$ c $中选择一个$ c $的点,其与$ v $中的点的总距离尽可能小。但是,我们只知道$ v $中的每个点,而不是访问基础距离度量,而是其在$ c $中的距离的排名。我们提出的算法仅使用这些排名作为输入选择$ c $中的点,并且我们在其\ emph {distortion}(最差案例近似比)上提供界限。这个问题的一个杰出动机来自投票理论,其中$ v $代表一组选民,$ c $代表一组候选人,排名对应于选民的序律偏好。在此框架中,一个主要的猜想是最佳确定性算法的失真$ 3 $。我们通过提供一种多项式时间算法来解决这种猜想,该算法可实现失真$ 3 $,与已知的下限匹配。我们这样做是通过证明将选民与候选人相匹配的新颖引理,我们称之为\ emph {排名匹配匹配的引理}。这种引理引起了一种新颖的算法,这可能具有独立的兴趣,我们表明该家庭中的一种特殊算法实现了失真$ 3 $。我们还使用$α$ - 任职性的概念提供了更精致,参数化的边界,该概念量化了选民相对于其他所有其他人的最佳选择的程度。最后,与已知结果相比,我们引入了一种新的随机算法,其变形有所改善,并且还可以改善所有确定性和随机算法的失真下限。
We study the following metric distortion problem: there are two finite sets of points, $V$ and $C$, that lie in the same metric space, and our goal is to choose a point in $C$ whose total distance from the points in $V$ is as small as possible. However, rather than having access to the underlying distance metric, we only know, for each point in $V$, a ranking of its distances to the points in $C$. We propose algorithms that choose a point in $C$ using only these rankings as input and we provide bounds on their \emph{distortion} (worst-case approximation ratio). A prominent motivation for this problem comes from voting theory, where $V$ represents a set of voters, $C$ represents a set of candidates, and the rankings correspond to ordinal preferences of the voters. A major conjecture in this framework is that the optimal deterministic algorithm has distortion $3$. We resolve this conjecture by providing a polynomial-time algorithm that achieves distortion $3$, matching a known lower bound. We do so by proving a novel lemma about matching voters to candidates, which we refer to as the \emph{ranking-matching lemma}. This lemma induces a family of novel algorithms, which may be of independent interest, and we show that a special algorithm in this family achieves distortion $3$. We also provide more refined, parameterized, bounds using the notion of $α$-decisiveness, which quantifies the extent to which a voter may prefer her top choice relative to all others. Finally, we introduce a new randomized algorithm with improved distortion compared to known results, and also provide improved lower bounds on the distortion of all deterministic and randomized algorithms.