Metric Distortion for Tournament Voting and Beyond
Moses Charikar, Prasanna Ramakrishnan, Zihan Tan, Kangning Wang

TL;DR
This paper investigates the metric distortion problem in social choice, proposing new deterministic and randomized tournament rules that approach the optimal distortion of 3, improving over previous bounds and extending to k-tournament rules.
Contribution
It establishes a new lower bound for deterministic rules, introduces a novel rule with improved distortion, and generalizes to k-tournament rules that approach optimal distortion as k increases.
Findings
Lower bound of 3.1128 on deterministic rules
New rule guarantees distortion 3.9312
Randomized 3-tournament rules can beat the longstanding barrier of distortion less than 3
Abstract
In the well-studied metric distortion problem in social choice, we have voters and candidates located in a shared metric space, and the objective is to design a voting rule that selects a candidate with minimal total distance to the voters. However, the voting rule has limited information about the distances in the metric, such as each voter's ordinal rankings of the candidates in order of distances. The central question is whether we can design rules that, for any election and underlying metric space, select a candidate whose total cost deviates from the optimal by only a small factor, referred to as the distortion. A long line of work resolved the optimal distortion of deterministic rules, and recent work resolved the optimal distortion of randomized (weighted) tournament rules, which only use the aggregate preferences between pairs of candidates. In both cases, simple rules achieve…
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Taxonomy
TopicsGame Theory and Voting Systems
