Proportional Representation in Metric Spaces and Low-Distortion Committee Selection
Yusuf Hakan Kalayci, David Kempe, Vikram Kher

TL;DR
This paper introduces a new notion of proportional representation in metric spaces, focusing on ordinal data and resource augmentation, and demonstrates that the Expanding Approvals Rule achieves strong fairness guarantees with minimal distortion.
Contribution
It defines a novel proportional fairness criterion for metric spaces, analyzes the Expanding Approvals Rule under ordinal information, and establishes its effectiveness in achieving fairness with low distortion.
Findings
EAR achieves constant proportional fairness in ordinal models.
EAR attains near-optimal core fairness with limited metric knowledge.
A simple voting rule with at most 44 metric distortion is proposed.
Abstract
We introduce a novel definition for a small set R of k points being "representative" of a larger set in a metric space. Given a set V (e.g., documents or voters) to represent, and a set C of possible representatives, our criterion requires that for any subset S comprising a theta fraction of V, the average distance of S to their best theta*k points in R should not be more than a factor gamma compared to their average distance to the best theta*k points among all of C. This definition is a strengthening of proportional fairness and core fairness, but - different from those notions - requires that large cohesive clusters be represented proportionally to their size. Since there are instances for which - unless gamma is polynomially large - no solutions exist, we study this notion in a resource augmentation framework, implicitly stating the constraints for a set R of size k as though its…
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Taxonomy
TopicsGame Theory and Voting Systems · Electoral Systems and Political Participation · Judicial and Constitutional Studies
MethodsSparse Evolutionary Training · Focus
