Modelling Moral Traits with Music Listening Preferences and Demographics
- URL: http://arxiv.org/abs/2107.00349v1
- Date: Thu, 1 Jul 2021 10:26:29 GMT
- Title: Modelling Moral Traits with Music Listening Preferences and Demographics
- Authors: Vjosa Preniqi, Kyriaki Kalimeri, Charalampos Saitis
- Abstract summary: We explore the association between music genre preferences, demographics and moral values by exploring self-reported data from an online survey administered in Canada.
Our results show the importance of music in predicting a person's moral values (.55-.69 AUROC); while knowledge of basic demographic features such as age and gender is enough to increase the performance.
- Score: 2.3204178451683264
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Music is an essential component in our everyday lives and experiences, as it
is a way that we use to express our feelings, emotions and cultures. In this
study, we explore the association between music genre preferences, demographics
and moral values by exploring self-reported data from an online survey
administered in Canada. Participants filled in the moral foundations
questionnaire, while they also provided their basic demographic information,
and music preferences. Here, we predict the moral values of the participants
inferring on their musical preferences employing classification and regression
techniques. We also explored the predictive power of features estimated from
factor analysis on the music genres, as well as the generalist/specialist (GS)
score for revealing the diversity of musical choices for each user. Our results
show the importance of music in predicting a person's moral values (.55-.69
AUROC); while knowledge of basic demographic features such as age and gender is
enough to increase the performance (.58-.71 AUROC).
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