Irreducibility of Recombination Markov Chains in the Triangular Lattice

Sarah Cannon
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引用次数: 1

Abstract

In the United States, regions are frequently divided into districts for the purpose of electing representatives. How the districts are drawn can affect who's elected, and drawing districts to give an advantage to a certain group is known as gerrymandering. It can be surprisingly difficult to detect gerrymandering, but one algorithmic method is to compare a current districting plan to a large number of randomly sampled plans to see whether it is an outlier. Recombination Markov chains are often used for this random sampling: randomly choose two districts, consider their union, and split this union in a new way. This works well in practice, but the theory behind it remains underdeveloped. For example, it's not known if recombination Markov chains are irreducible, that is, if recombination moves suffice to move from any districting plan to any other. Irreducibility of recombination Markov chains can be formulated as a graph problem: for a graph $G$, is the space of all partitions of $G$ into $k$ connected subgraphs ($k$ districts) connected by recombination moves? We consider three simply connected districts and district sizes $k_1\pm 1$ vertices, $k_2\pm 1$ vertices, and $k3\pm 1$ vertices. We prove for arbitrarily large triangular regions in the triangular lattice, recombination Markov chains are irreducible. This is the first proof of irreducibility under tight district size constraints for recombination Markov chains beyond small or trivial examples.
三角格中复合马尔可夫链的不可约性
在美国,地区经常被划分为选区,以便选举代表。选区的划分方式会影响谁当选,而为了给某个群体带来优势而划分选区被称为gerrymandering。检测不公正的选区划分可能会非常困难,但一种算法方法是将当前的分区计划与大量随机抽样的计划进行比较,看看它是否是一个异常值。重组马尔可夫链通常用于这种随机抽样:随机选择两个区域,考虑它们的并集,并以一种新的方式分裂这个并集。这在实践中很有效,但其背后的理论仍不发达。例如,不知道重组马尔可夫链是否不可约,也就是说,不知道重组是否足以从任何分区计划移动到任何其他分区计划。重组马尔可夫链的不可约性可以表述为一个图问题:对于一个图$G$, $G$的所有分割成$k$连通子图($k$区)的空间是否被重组动作连接?我们考虑三个单连通区域和区域大小$k_1\pm 1$顶点,$k_2\pm 1$顶点和$k3\pm 1$顶点。证明了在三角格中任意大的三角形区域,复合马尔可夫链是不可约的。本文首次证明了复合马尔可夫链在严格区域大小约束下的不可约性。
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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