An affective computing approach to physiological emotion specificity: Toward subject-independent and stimulus-independent classification of film-induced emotions

The hypothesis of physiological emotion specificity has been tested using pattern classification analysis (PCA). To address limitations of prior research using PCA, we studied effects of feature selection (sequential forward selection, sequential backward selection), classifier type (linear and quad...

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Bibliographic Details
Published inPsychophysiology Vol. 48; no. 7; pp. 908 - 922
Main Authors Kolodyazhniy, Vitaliy, Kreibig, Sylvia D., Gross, James J., Roth, Walton T., Wilhelm, Frank H.
Format Journal Article
LanguageEnglish
Published Malden, USA Blackwell Publishing Inc 01.07.2011
Blackwell Publishing Ltd
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Summary:The hypothesis of physiological emotion specificity has been tested using pattern classification analysis (PCA). To address limitations of prior research using PCA, we studied effects of feature selection (sequential forward selection, sequential backward selection), classifier type (linear and quadratic discriminant analysis, neural networks, k‐nearest neighbors method), and cross‐validation method (subject‐ and stimulus‐(in)dependence). Analyses were run on a data set of 34 participants watching two sets of three 10‐min film clips (fearful, sad, neutral) while autonomic, respiratory, and facial muscle activity were assessed. Results demonstrate that the three states can be classified with high accuracy by most classifiers, with the sparsest model having only five features, even for the most difficult task of identifying the emotion of an unknown subject in an unknown situation (77.5%). Implications for choosing PCA parameters are discussed.
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ArticleID:PSYP1170
The first and second authors contributed equally to this work. This research was supported by the 6th Framework Programme Project EUCLOCK (018741) funded by the European Commission (F.W., V.K.), the Basel Scientific Society (F.W.), and the National Center of Competence in Research Affective Sciences funded by the Swiss National Science Foundation (51NF40‐104897) and hosted by the University of Geneva (S.K.) and the Swiss National Science Foundation (PBGEP1‐125914; S.K.). Some of these data were presented at the annual meeting of the Society for Psychophysiological Research (October, 2007).
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ISSN:0048-5772
1469-8986
1469-8986
1540-5958
DOI:10.1111/j.1469-8986.2010.01170.x