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Investigation of different ML approaches in classification of emotions induced by acute stress.
Sourkatti, Heba; Pettersson, Kati; van der Sanden, Bart; Lindholm, Mikko; Plomp, Johan; Määttänen, Ilmari; Henttonen, Pentti; Närväinen, Johanna.
Afiliação
  • Sourkatti H; VTT Technical Research Center of Finland, Tekniikantie 1, 02150 Espoo, Finland.
  • Pettersson K; VTT Technical Research Center of Finland, Tekniikantie 1, 02150 Espoo, Finland.
  • van der Sanden B; Eindhoven University of Technology, Electrical Engineering, Netherlands.
  • Lindholm M; VTT Technical Research Center of Finland, Tekniikantie 1, 02150 Espoo, Finland.
  • Plomp J; VTT Technical Research Center of Finland, Tekniikantie 1, 02150 Espoo, Finland.
  • Määttänen I; University of Helsinki, Department of Psychology and Logopedics, Faculty of Medicine, P.O. Box 63, 00014 University of Helsinki, Finland.
  • Henttonen P; University of Helsinki, Department of Psychology and Logopedics, Faculty of Medicine, P.O. Box 63, 00014 University of Helsinki, Finland.
  • Närväinen J; VTT Technical Research Center of Finland, Tekniikantie 1, 02150 Espoo, Finland.
Heliyon ; 10(1): e23611, 2024 Jan 15.
Article em En | MEDLINE | ID: mdl-38173518
ABSTRACT

Background:

Machine learning is becoming a common tool in monitoring emotion. However, methodological studies of the processing pipeline are scarce, especially ones using subjective appraisals as ground truth. New

method:

A novel protocol was used to induce cognitive load and physical discomfort, and emotional dimensions (arousal, valence, and dominance) were reported after each task. The performance of five common ML models with a versatile set of features (physiological features, task performance data, and personality trait) was compared in binary classification of subjectively assessed emotions.

Results:

The psychophysiological responses proved the protocol was successful in changing the mental state from baseline, also the cognitive and physical tasks were different. The optimization and performance of ML models used for emotion detection were evaluated. Additionally, methods to account for imbalanced classes were applied and shown to improve the classification performance. Comparison with existing

methods:

Classification of human emotional states often assumes the states are determined by the stimuli. However, individual appraisals vary. None of the past studies have classified subjective emotional dimensions with a set of features including biosignals, personality and behavior.

Conclusion:

Our data represent a typical setup in affective computing utilizing psychophysiological monitoring N is low compared to number of features, inter-individual variability is high, and class imbalance cannot be avoided. Our observations are a) if possible, include features representing physiology, behavior and personality, b) use simple models and limited number of features to improve interpretability, c) address the possible imbalance, d) if the data size allows, use nested cross-validation.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Heliyon Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Finlândia

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Heliyon Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Finlândia