Multiobjective Optimization for Politically Fair Districting: A Scalable Multilevel Approach

Oper. Res. Pub Date : 2022-08-19 DOI:10.1287/opre.2022.2311
Rahul Swamy, D. King, S. Jacobson
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引用次数: 11

Abstract

Gerrymandering has been a fundamental issue in American democracy for more than two centuries, with significant implications for electoral representation. Traditional optimization models for political districting primarily model nonpolitical fairness metrics such as the compactness of districts. In “Multiobjective Optimization for Politically Fair Districting: A Scalable Multilevel Approach,” Swamy, King, and Jacobson propose optimization models that explicitly incorporate political fairness objectives using political data from past elections. These objectives model fundamental fairness principles such as vote-seat proportionality (efficiency gap), partisan (a)symmetry, and competitiveness. They propose a solution strategy, called the multilevel algorithm, that solves large instances of the problem using a series of matching-based graph contractions. A case study on congressional districting in Wisconsin demonstrates that district plans balance the interests of the voters and the political parties.
政治公平分区的多目标优化:一种可扩展的多层次方法
两个多世纪以来,不公正地划分选区一直是美国民主的一个基本问题,对选举代表权产生了重大影响。传统的政治分区优化模型主要模拟非政治公平指标,如地区的紧密性。在“政治公平选区的多目标优化:一种可扩展的多层次方法”中,Swamy, King和Jacobson提出了优化模型,该模型利用过去选举的政治数据明确地结合了政治公平目标。这些目标模拟了基本的公平原则,如选票席位比例性(效率差距)、党派对称性和竞争力。他们提出了一种解决策略,称为多层算法,该算法使用一系列基于匹配的图收缩来解决问题的大型实例。对威斯康辛州国会选区的案例研究表明,选区规划平衡了选民和政党的利益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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