2022
DOI: 10.14201/rlop.25882
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Against all Odds: Forecasting Brazilian Presidential Elections in times of political disruption

Abstract: When the number of observed elections is low, subnational data can be used to perform electoral forecasts. Turgeon and Rennó (2012) applied this solution and proposed three forecasting models to analyze Brazilian presidential elections (1994-2006). The models, adapted from forecasting models of American and French presidential elections, considers economic and political factors. We extend their analysis to the recent presidential elections in Brazil (2010, 2014 and 2018) and find that the addition of the three… Show more

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“…Structural forecasting models represent a principal method for forecasting elections in the developed world. However, these models may not be well-suited to forecasting elections in young democracies (Bertholini, Rennó, & Turgeon, 2022). The limited number of elections in Latin America constitutes the principal obstacle to employing structural models in the region (Arce & Vera, 2022).…”
Section: Election Forecasting In Young Democraciesmentioning
confidence: 99%
“…Structural forecasting models represent a principal method for forecasting elections in the developed world. However, these models may not be well-suited to forecasting elections in young democracies (Bertholini, Rennó, & Turgeon, 2022). The limited number of elections in Latin America constitutes the principal obstacle to employing structural models in the region (Arce & Vera, 2022).…”
Section: Election Forecasting In Young Democraciesmentioning
confidence: 99%