Abstract
Assuring election integrity is essential for the legitimacy of elected representative democratic government. Until recently, other than in-person election observation, there have been few quantitative methods for determining the integrity of a democratic election. Here we present a machine learning methodology for identifying polling places at risk of election fraud and estimating the extent of potential electoral manipulation, using synthetic training data. We apply this methodology to mesa-level data from Argentina’s 2015 national elections.
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CITATION STYLE
Zhang, M., Michael Alvarez, R., & Levin, I. (2019). Election forensics: Using machine learning and synthetic data for possible election anomaly detection. PLoS ONE, 14(10). https://doi.org/10.1371/journal.pone.0223950
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