The Traveling Mailman: Topological Optimization Methods for User-Centric Redistricting

Nelson A. Colón Vargas
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Abstract

This study introduces a new districting approach using the US Postal Service network to measure community connectivity. We combine Topological Data Analysis with Markov Chain Monte Carlo methods to assess district boundaries' impact on community integrity. Using Iowa as a case study, we generate and refine districting plans using KMeans clustering and stochastic rebalancing. Our method produces plans with fewer cut edges and more compact shapes than the official Iowa plan under relaxed conditions. The low likelihood of finding plans as disruptive as the official one suggests potential inefficiencies in existing boundaries. Gaussian Mixture Model analysis reveals three distinct distributions in the districting landscape. This framework offers a more accurate reflection of community interactions for fairer political representation.
旅行邮差:以用户为中心重划选区的拓扑优化方法
本研究利用美国邮政网络引入了一种新的选区方法来衡量社区的连通性。我们将拓扑数据分析与马尔可夫链蒙特卡洛方法相结合,评估选区边界对社区完整性的影响。以爱荷华州为例,我们利用 KMeans 聚类和随机再平衡生成并完善了选区划分计划。在宽松条件下,与爱荷华州的官方规划相比,我们的方法生成的规划切边更少,形状更紧凑。发现与官方计划一样具有破坏性的计划的可能性很低,这表明现有的选区划分可能存在效率低下的问题。高斯混合模型分析揭示了选区划分的三种不同分布。该框架能更准确地反映社区互动,从而实现更公平的政治代表性。
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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