Priors rule: When do Malfeasance Revelations Help or Hurt Incumbent Parties?
Author(s) -
Eric Arias,
Horacio Larreguy,
John Marshall,
Pablo Querubín
Publication year - 2018
Publication title -
randomized social experiments ejournal
Language(s) - English
Resource type - Reports
DOI - 10.3386/w24888
Subject(s) - prior probability , business , law and economics , economics , computer science , bayesian probability , artificial intelligence
Effective policy-making requires that voters avoid electing malfeasant politicians. However, as our simple learning model emphasizing voters’ prior beliefs and updating highlights, informing voters of incumbent malfeasance may not entail sanctioning. Specifically, electoral punishment of incumbents revealed to be malfeasant is rare where voters already believed them to be malfeasant, while information’s effect on turnout is non-linear in the magnitude of revealed malfeasance. These Bayesian predictions are supported by a field experiment informing Mexican voters about malfeasant mayoral spending before municipal elections. Given voters’ low expectations and initial uncertainty, as well as politician responses, relatively severe malfeasance revelations increased incumbent vote share on average. Consistent with voter learning, rewards were lower among voters with lower malfeasance priors, among voters with more precise prior beliefs, when audits revealed greater malfeasance, and among voters updating less favorably. Furthermore, both low and high malfeasance revelations increased turnout, while less surprising information reduced turnout.
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