Predicting current voting intentions by big five personality domains, facets, and nuances – A random forest analysis approach in a German sample

Cornelia Sindermann, Rene Mottus, Dmitri Rozgonjuk, Christian Montag

Research output: Contribution to journalArticlepeer-review

Abstract

To understand what was driving individual differences in voting intentions in a large German sample, we investigated the predictability of voting intentions from the Big Five personality domains, facets, and nuances, thereby tackling shortcomings of previous studies. Using random forest analyses in a dataset of N = 4,286 individuals (46.01% men), separate models were trained to predict intentions to 1) not vote versus to vote, 2) vote for a specific party, and 3) vote for a left- versus right-from-the-center party from either the Big Five personality domains, facets, or nuances (represented by individual items). Except for intentions to not vote versus to vote, balanced accuracies to predict voting intentions marginally exceeded those achieved by a baseline learner always predicting the majority class. Using nuances over facets and domains slightly increased balanced accuracies. Results indicate that additional variables should be considered to accurately predict voting intentions, at least in German samples.
Original languageEnglish
Number of pages21
JournalPersonality Science
Volume2
Early online date21 Sep 2021
DOIs
Publication statusE-pub ahead of print - 21 Sep 2021

Keywords

  • Big Five
  • personality
  • voting intentions
  • voting
  • random forest

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