Statistics and Public Policy (Jan 2020)

Separating Effect From Significance in Markov Chain Tests

  • Maria Chikina,
  • Alan Frieze,
  • Jonathan C. Mattingly,
  • Wesley Pegden

DOI
https://doi.org/10.1080/2330443X.2020.1806763
Journal volume & issue
Vol. 7, no. 1
pp. 101 – 114

Abstract

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We give qualitative and quantitative improvements to theorems which enable significance testing in Markov chains, with a particular eye toward the goal of enabling strong, interpretable, and statistically rigorous claims of political gerrymandering. Our results can be used to demonstrate at a desired significance level that a given Markov chain state (e.g., a districting) is extremely unusual (rather than just atypical) with respect to the fragility of its characteristics in the chain. We also provide theorems specialized to leverage quantitative improvements when there is a product structure in the underlying probability space, as can occur due to geographical constraints on districtings.

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