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Training machine learning algorithms for automatic facial coding: The role of emotional facial expressions’ prototypicality

Automatic facial coding (AFC) is a promising new research tool to efficiently analyze emotional facial expressions. AFC is based on machine learning procedures to infer emotion categorization from facial movements (i.e., Action Units). State-of-the-art AFC accurately classifies intense and prototypi...

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Autores principales: Büdenbender, Björn, Höfling, Tim T. A., Gerdes, Antje B. M., Alpers, Georg W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9916590/
https://www.ncbi.nlm.nih.gov/pubmed/36763694
http://dx.doi.org/10.1371/journal.pone.0281309
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author Büdenbender, Björn
Höfling, Tim T. A.
Gerdes, Antje B. M.
Alpers, Georg W.
author_facet Büdenbender, Björn
Höfling, Tim T. A.
Gerdes, Antje B. M.
Alpers, Georg W.
author_sort Büdenbender, Björn
collection PubMed
description Automatic facial coding (AFC) is a promising new research tool to efficiently analyze emotional facial expressions. AFC is based on machine learning procedures to infer emotion categorization from facial movements (i.e., Action Units). State-of-the-art AFC accurately classifies intense and prototypical facial expressions, whereas it is less accurate for non-prototypical and less intense facial expressions. A potential reason might be that AFC is typically trained with standardized and prototypical facial expression inventories. Because AFC would be useful to analyze less prototypical research material as well, we set out to determine the role of prototypicality in the training material. We trained established machine learning algorithms either with standardized expressions from widely used research inventories or with unstandardized emotional facial expressions obtained in a typical laboratory setting and tested them on identical or cross-over material. All machine learning models’ accuracies were comparable when trained and tested with held-out dataset from the same dataset (acc. = [83.4% to 92.5%]). Strikingly, we found a substantial drop in accuracies for models trained with the highly prototypical standardized dataset when tested in the unstandardized dataset (acc. = [52.8%; 69.8%]). However, when they were trained with unstandardized expressions and tested with standardized datasets, accuracies held up (acc. = [82.7%; 92.5%]). These findings demonstrate a strong impact of the training material’s prototypicality on AFC’s ability to classify emotional faces. Because AFC would be useful for analyzing emotional facial expressions in research or even naturalistic scenarios, future developments should include more naturalistic facial expressions for training. This approach will improve the generalizability of AFC to encode more naturalistic facial expressions and increase robustness for future applications of this promising technology.
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spelling pubmed-99165902023-02-11 Training machine learning algorithms for automatic facial coding: The role of emotional facial expressions’ prototypicality Büdenbender, Björn Höfling, Tim T. A. Gerdes, Antje B. M. Alpers, Georg W. PLoS One Research Article Automatic facial coding (AFC) is a promising new research tool to efficiently analyze emotional facial expressions. AFC is based on machine learning procedures to infer emotion categorization from facial movements (i.e., Action Units). State-of-the-art AFC accurately classifies intense and prototypical facial expressions, whereas it is less accurate for non-prototypical and less intense facial expressions. A potential reason might be that AFC is typically trained with standardized and prototypical facial expression inventories. Because AFC would be useful to analyze less prototypical research material as well, we set out to determine the role of prototypicality in the training material. We trained established machine learning algorithms either with standardized expressions from widely used research inventories or with unstandardized emotional facial expressions obtained in a typical laboratory setting and tested them on identical or cross-over material. All machine learning models’ accuracies were comparable when trained and tested with held-out dataset from the same dataset (acc. = [83.4% to 92.5%]). Strikingly, we found a substantial drop in accuracies for models trained with the highly prototypical standardized dataset when tested in the unstandardized dataset (acc. = [52.8%; 69.8%]). However, when they were trained with unstandardized expressions and tested with standardized datasets, accuracies held up (acc. = [82.7%; 92.5%]). These findings demonstrate a strong impact of the training material’s prototypicality on AFC’s ability to classify emotional faces. Because AFC would be useful for analyzing emotional facial expressions in research or even naturalistic scenarios, future developments should include more naturalistic facial expressions for training. This approach will improve the generalizability of AFC to encode more naturalistic facial expressions and increase robustness for future applications of this promising technology. Public Library of Science 2023-02-10 /pmc/articles/PMC9916590/ /pubmed/36763694 http://dx.doi.org/10.1371/journal.pone.0281309 Text en © 2023 Büdenbender et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Büdenbender, Björn
Höfling, Tim T. A.
Gerdes, Antje B. M.
Alpers, Georg W.
Training machine learning algorithms for automatic facial coding: The role of emotional facial expressions’ prototypicality
title Training machine learning algorithms for automatic facial coding: The role of emotional facial expressions’ prototypicality
title_full Training machine learning algorithms for automatic facial coding: The role of emotional facial expressions’ prototypicality
title_fullStr Training machine learning algorithms for automatic facial coding: The role of emotional facial expressions’ prototypicality
title_full_unstemmed Training machine learning algorithms for automatic facial coding: The role of emotional facial expressions’ prototypicality
title_short Training machine learning algorithms for automatic facial coding: The role of emotional facial expressions’ prototypicality
title_sort training machine learning algorithms for automatic facial coding: the role of emotional facial expressions’ prototypicality
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9916590/
https://www.ncbi.nlm.nih.gov/pubmed/36763694
http://dx.doi.org/10.1371/journal.pone.0281309
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