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Proceedings
SIAM Conference on Applied and Computational Discrete Algorithms (ACDA21)

Fairmandering: A column generation heuristic for fairness-optimized political districting

Abstract

The American winner-take-all congressional district system empowers politicians to engineer electoral outcomes by manipulating district boundaries. Existing computational solutions mostly focus on drawing unbiased maps by ignoring political and demographic input, and instead simply optimize for compactness. We claim that this is a flawed approach because compactness and fairness are orthogonal qualities, and introduce a scalable two-stage method to explicitly optimize for arbitrary piecewise-linear definitions of fairness. The first stage is a randomized divide-and-conquer column generation heuristic which produces an exponential number of distinct district plans by exploiting the compositional structure of graph partitioning problems. This district ensemble forms the input to a master selection problem to choose the districts to include in the final plan. Our decoupled design allows for unprecedented flexibility in defining fairness-aligned objective functions. The pipeline is arbitrarily parallelizable, is flexible to support additional redistricting constraints, and can be applied to a wide array of other regionalization problems. In the largest ever ensemble study of congressional districts, we use our method to understand the range of possible expected outcomes and the implications of this range on potential definitions of fairness.

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cover image Proceedings
SIAM Conference on Applied and Computational Discrete Algorithms (ACDA21)
Pages: 88 - 99
Editors: Bender Michael, Stony Brook University, USA , Gilbert John, University of California, Santa Barbara, U.S., USA , and Sullivan D. Blair, University of Utah, USA
ISBN (Online): 978-1-611976-83-0

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Published online: 19 July 2021

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*
Supported in part by NSF grants CCF-1522054, CCF-1526067, and CCF-1740822, DMS-1839346, and CNS-1952063.

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