NCAILGROOct 22, 2020

A Multi-Componential Approach to Emotion Recognition and the Effect of Personality

arXiv:2010.11370v140 citations
Originality Incremental advance
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This work addresses the gap in systematically linking discrete emotions to a multi-process view in psychology, with potential applications in emotion recognition and understanding individual differences.

This paper tackles the problem of characterizing emotional experiences by applying a componential framework with a data-driven approach to movie-watching data, finding that differences between emotions can be captured by at least 6 latent dimensions and that the model can predict discrete emotions satisfactorily.

Emotions are an inseparable part of human nature affecting our behavior in response to the outside world. Although most empirical studies have been dominated by two theoretical models including discrete categories of emotion and dichotomous dimensions, results from neuroscience approaches suggest a multi-processes mechanism underpinning emotional experience with a large overlap across different emotions. While these findings are consistent with the influential theories of emotion in psychology that emphasize a role for multiple component processes to generate emotion episodes, few studies have systematically investigated the relationship between discrete emotions and a full componential view. This paper applies a componential framework with a data-driven approach to characterize emotional experiences evoked during movie watching. The results suggest that differences between various emotions can be captured by a few (at least 6) latent dimensions, each defined by features associated with component processes, including appraisal, expression, physiology, motivation, and feeling. In addition, the link between discrete emotions and component model is explored and results show that a componential model with a limited number of descriptors is still able to predict the level of experienced discrete emotion(s) to a satisfactory level. Finally, as appraisals may vary according to individual dispositions and biases, we also study the relationship between personality traits and emotions in our computational framework and show that the role of personality on discrete emotion differences can be better justified using the component model.

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