Tight Bounds On the Distortion of Randomized and Deterministic Distributed Voting
- FedML
We study metric distortion in distributed voting, where voters are partitioned into 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}: , , , and . 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 from to , establish a tight lower bound of for (improving on ), and tighten the upper bound for from to .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: for , for and , and for . In case (ii), we show tight bounds of for and , and nearly tight bounds for and within and , respectively, where denotes the largest group size.
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