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Tight Bounds On the Distortion of Randomized and Deterministic Distributed Voting

Main:8 Pages
12 Figures
Bibliography:1 Pages
8 Tables
Appendix:27 Pages
Abstract

We study metric distortion in distributed voting, where nn voters are partitioned into kk groups, each selecting a local representative, and a final winner is chosen from these representatives (or from the entire set of candidates). This setting models systems like U.S. presidential elections, where state-level decisions determine the national outcome. We focus on four cost objectives from \citep{anshelevich2022distortion}: \avgavg\avgavg, \avgmax\avgmax, \maxavg\maxavg, and \maxmax\maxmax. We present improved distortion bounds for both deterministic and randomized mechanisms, offering a near-complete characterization of distortion in this model.For deterministic mechanisms, we reduce the upper bound for \avgmax\avgmax from 1111 to 77, establish a tight lower bound of 55 for \maxavg\maxavg (improving on 2+52+\sqrt{5}), and tighten the upper bound for \maxmax\maxmax from 55 to 33.For randomized mechanisms, we consider two settings: (i) only the second stage is randomized, and (ii) both stages may be randomized. In case (i), we prove tight bounds: 5 ⁣ ⁣2/k5\!-\!2/k for \avgavg\avgavg, 33 for \avgmax\avgmax and \maxmax\maxmax, and 55 for \maxavg\maxavg. In case (ii), we show tight bounds of 33 for \maxavg\maxavg and \maxmax\maxmax, and nearly tight bounds for \avgavg\avgavg and \avgmax\avgmax within [3 ⁣ ⁣2/n, 3 ⁣ ⁣2/(kn)][3\!-\!2/n,\ 3\!-\!2/(kn^*)] and [3 ⁣ ⁣2/n, 3][3\!-\!2/n,\ 3], respectively, where nn^* denotes the largest group size.

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