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Main Authors: Cianfarani, Christian, Cohen, Aloni
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.06801
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author Cianfarani, Christian
Cohen, Aloni
author_facet Cianfarani, Christian
Cohen, Aloni
contents Data from the Decennial Census is published only after applying a disclosure avoidance system (DAS). Data users were shaken by the adoption of differential privacy in the 2020 DAS, a radical departure from past methods. The goal of this paper is to better understand how the perturbations from the 2020 DAS combine with sharp legal thresholds to impact redistricting. We consider two redistricting settings in which a data user might be concerned about the impacts of privacy preserving noise: drawing equal population districts and litigating voting rights cases. What discrepancies arise if the user does nothing to account for disclosure avoidance? How can the discrepancies be understood and accounted for? We study these questions by comparing the official 2010 Redistricting Data to the 2010 Demonstration Data--created using the 2020 DAS--in an analysis of millions of algorithmically generated state legislative redistricting plans. We find that thresholding can amplify the impact of the noise from disclosure avoidance. Large discrepancies do occur, but in ways that are well-captured by simple models and appear to be possible to account for. We demonstrate the utility of these models by proposing an approach to mitigate discrepancies when balancing district populations. At least for state legislatures, Alabama's claim that differential privacy "inhibits a State's right to draw fair lines" lacks support.
format Preprint
id arxiv_https___arxiv_org_abs_2409_06801
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Understanding and Mitigating the Impacts of Differentially Private Census Data on State Level Redistricting
Cianfarani, Christian
Cohen, Aloni
Computers and Society
Data from the Decennial Census is published only after applying a disclosure avoidance system (DAS). Data users were shaken by the adoption of differential privacy in the 2020 DAS, a radical departure from past methods. The goal of this paper is to better understand how the perturbations from the 2020 DAS combine with sharp legal thresholds to impact redistricting. We consider two redistricting settings in which a data user might be concerned about the impacts of privacy preserving noise: drawing equal population districts and litigating voting rights cases. What discrepancies arise if the user does nothing to account for disclosure avoidance? How can the discrepancies be understood and accounted for? We study these questions by comparing the official 2010 Redistricting Data to the 2010 Demonstration Data--created using the 2020 DAS--in an analysis of millions of algorithmically generated state legislative redistricting plans. We find that thresholding can amplify the impact of the noise from disclosure avoidance. Large discrepancies do occur, but in ways that are well-captured by simple models and appear to be possible to account for. We demonstrate the utility of these models by proposing an approach to mitigate discrepancies when balancing district populations. At least for state legislatures, Alabama's claim that differential privacy "inhibits a State's right to draw fair lines" lacks support.
title Understanding and Mitigating the Impacts of Differentially Private Census Data on State Level Redistricting
topic Computers and Society
url https://arxiv.org/abs/2409.06801