A machine learning approach to quantify the specificity of colour–emotion associations and their cultural differences

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License: CC BY 4.0
Serval ID
serval:BIB_C8254806DB29
Type
Article: article from journal or magazin.
Publication sub-type
Minutes: analyse of a published work.
Collection
Publications
Institution
Title
A machine learning approach to quantify the specificity of colour–emotion associations and their cultural differences
Journal
Royal Society Open Science
Author(s)
Jonauskaite Domicele, Wicker Jörg, Mohr Christine, Dael Nele, Havelka Jelena, Papadatou-Pastou Marietta, Zhang Meng, Oberfeld Daniel
ISSN
2054-5703
2054-5703
Publication state
Published
Issued date
27/09/2019
Peer-reviewed
Oui
Volume
6
Number
9
Pages
190741
Language
english
Abstract
The link between colour and emotion and its possible similarity across cultures are questions that have not been fully resolved. Online, 711 participants from China, Germany, Greece and the UK associated 12 colour terms with 20 discrete emotion terms in their native languages. We propose a machine learning approach to quantify (a) the consistency and specificity of colour–emotion associations and (b) the degree to which they are country-specific, on the basis of the accuracy of a statistical classifier in (a) decoding the colour term evaluated on a given trial from the 20 ratings of colour–emotion associations and (b) predicting the country of origin from the 240 individual colour–emotion associations, respectively. The classifier accuracies were significantly above chance level, demonstrating that emotion associations are to some extent colour-specific and that colour–emotion associations are to some extent country-specific. A second measure of country-specificity, the in-group advantage of the colour-decoding accuracy, was detectable but relatively small (6.1%), indicating that colour– emotion associations are both universal and culture-specific. Our results show that machine learning is a promising tool when analysing complex datasets from emotion research.
Open Access
Yes
Funding(s)
Swiss National Science Foundation / P0LAP1_175055
Create date
25/09/2019 9:58
Last modification date
26/09/2019 7:08
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