2023
DOI: 10.1038/s41598-023-45935-1
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Humor appreciation can be predicted with machine learning techniques

Hannes Rosenbusch,
Thomas Visser

Abstract: Humor research is supposed to predict whether something is funny. According to its theories and observations, amusement should be predictable based on a wide variety of variables. We test the practical value of humor appreciation research in terms of prediction accuracy. We find that machine learning methods (boosted decision trees) can indeed predict humor appreciation with an accuracy close to its theoretical ceiling. However, individual demographic and psychological variables, while replicating previous sta… Show more

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