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Bayesian Inference on Proportional Elections
Author(s) -
Gabriel Hideki Vatanabe Brunello,
Eduardo Yoshio Nakano
Publication year - 2015
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0116924
Subject(s) - proportional representation , voting , chamber of deputies , monte carlo method , bayesian probability , context (archaeology) , inference , bayesian inference , computer science , econometrics , statistical inference , representation (politics) , legislature , statistics , mathematics , political science , artificial intelligence , law , politics , geography , democracy , archaeology
Polls for majoritarian voting systems usually show estimates of the percentage of votes for each candidate. However, proportional vote systems do not necessarily guarantee the candidate with the most percentage of votes will be elected. Thus, traditional methods used in majoritarian elections cannot be applied on proportional elections. In this context, the purpose of this paper was to perform a Bayesian inference on proportional elections considering the Brazilian system of seats distribution. More specifically, a methodology to answer the probability that a given party will have representation on the chamber of deputies was developed. Inferences were made on a Bayesian scenario using the Monte Carlo simulation technique, and the developed methodology was applied on data from the Brazilian elections for Members of the Legislative Assembly and Federal Chamber of Deputies in 2010. A performance rate was also presented to evaluate the efficiency of the methodology. Calculations and simulations were carried out using the free R statistical software.

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