Optimized Distortion and Proportional Fairness in Voting
Soroush Ebadian, Anson Kahng, Dominik Peters, Nisarg Shah

TL;DR
This paper introduces a new voting rule that optimally balances social welfare and fairness measures, achieving the best possible distortion and proportional fairness approximations for various utility classes.
Contribution
It presents the first voting rule attaining optimal distortion $ heta( oot m)$ for unit-sum, unit-range, and approval utilities, and achieves a $ heta( oot m)$-approximation to proportional fairness.
Findings
Achieves optimal $ heta( oot m)$ distortion for multiple utility classes.
Provides a voting rule with $ heta( ext{log } m)$ approximation to proportional fairness.
Proves $ heta( ext{log } m)$ is the best possible approximation for fairness measures.
Abstract
A voting rule decides on a probability distribution over a set of m alternatives, based on rankings of those alternatives provided by agents. We assume that agents have cardinal utility functions over the alternatives, but voting rules have access to only the rankings induced by these utilities. We evaluate how well voting rules do on measures of social welfare and of proportional fairness, computed based on the hidden utility functions. In particular, we study the distortion of voting rules, which is a worst-case measure. It is an approximation ratio comparing the utilitarian social welfare of the optimum outcome to the social welfare produced by the outcome selected by the voting rule, in the worst case over possible input profiles and utility functions that are consistent with the input. The previous literature has studied distortion with unit-sum utility functions (which are…
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