More Style, Less Work: Card-style Data Decrease Risk-limiting Audit Sample Sizes

Author:

Glazer Amanda K.1ORCID,Spertus Jacob V.1,Stark Philip B.1ORCID

Affiliation:

1. Department of Statistics, University of California, Berkeley

Abstract

U.S. elections rely heavily on computers such as voter registration databases, electronic pollbooks, voting machines, scanners, tabulators, and results reporting websites. These introduce digital threats to election outcomes. Risk-limiting audits (RLAs) mitigate threats to some of these systems by manually inspecting random samples of ballot cards. RLAs have a large chance of correcting wrong outcomes (by conducting a full manual tabulation of a trustworthy record of the votes), but can save labor when reported outcomes are correct. This efficiency is eroded when sampling cannot be targeted to ballot cards that contain the contest(s) under audit. If the sample is drawn from all cast cards, then RLA sample sizes scale like the reciprocal of the fraction of ballot cards that contain the contest(s) under audit. That fraction shrinks as the number of cards per ballot grows (i.e., when elections contain more contests) and as the fraction of ballots that contain the contest decreases (i.e., when a smaller percentage of voters are eligible to vote in the contest). States that conduct RLAs of contests on multi-card ballots or RLAs of small contests can dramatically reduce sample sizes by using information about which ballot cards contain which contests—by keeping track of card-style data (CSD). For instance, CSD reduce the expected number of draws needed to audit a single countywide contest on a 4-card ballot by 75%. Similarly, CSD reduce the expected number of draws by 95% or more for an audit of two contests with the same margin on a 4-card ballot if one contest is on every ballot and the other is on 10% of ballots. In realistic examples, the savings can be several orders of magnitude.

Funder

National Science Foundation (NSF) Graduate Research Fellowship

NSF

Publisher

Association for Computing Machinery (ACM)

Subject

General Medicine

Reference20 articles.

1. Ballot-marking devices cannot assure the will of the voters;Appel A. W.;Elect. Law J.,2020

2. Evidence-based elections: Create a meaningful paper trail, then audit;Appel A. W.;Georgetown Law Technol. Rev.,2020

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1. COBRA: Comparison-Optimal Betting for Risk-Limiting Audits;Financial Cryptography and Data Security. FC 2023 International Workshops;2023-12-05

2. ALPHA: Audit that learns from previously hand-audited ballots;The Annals of Applied Statistics;2023-03-01

3. Non(c)esuch Ballot-Level Comparison Risk-Limiting Audits;Computer Security. ESORICS 2022 International Workshops;2023

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