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Non-reversible Markov chain Monte Carlo for sampling of districting maps

Publication ,  Journal Article
Herschlag, G; Mattingly, JC; Sachs, M; Wyse, E
August 18, 2020

Evaluating the degree of partisan districting (Gerrymandering) in a statistical framework typically requires an ensemble of districting plans which are drawn from a prescribed probability distribution that adheres to a realistic and non-partisan criteria. In this article we introduce novel non-reversible Markov chain Monte-Carlo (MCMC) methods for the sampling of such districting plans which have improved mixing properties in comparison to previously used (reversible) MCMC algorithms. In doing so we extend the current framework for construction of non-reversible Markov chains on discrete sampling spaces by considering a generalization of skew detailed balance. We provide a detailed description of the proposed algorithms and evaluate their performance in numerical experiments.

Duke Scholars

Publication Date

August 18, 2020
 

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Herschlag, G., Mattingly, J. C., Sachs, M., & Wyse, E. (2020). Non-reversible Markov chain Monte Carlo for sampling of districting maps.
Herschlag, Gregory, Jonathan C. Mattingly, Matthias Sachs, and Evan Wyse. “Non-reversible Markov chain Monte Carlo for sampling of districting maps,” August 18, 2020.
Herschlag G, Mattingly JC, Sachs M, Wyse E. Non-reversible Markov chain Monte Carlo for sampling of districting maps. 2020 Aug 18;
Herschlag G, Mattingly JC, Sachs M, Wyse E. Non-reversible Markov chain Monte Carlo for sampling of districting maps. 2020 Aug 18;

Publication Date

August 18, 2020