Linking emotions to behaviors through deep transfer learning

Author:

Li Haoqi1,Baucom Brian2,Georgiou Panayiotis1

Affiliation:

1. Department of Electrical and Computer Engineering, University of Southern California, Los Angeles, CA, United States of America

2. Department of Psychology, University of Utah, Salt Lake City, UT, United States of America

Abstract

Human behavior refers to the way humans act and interact. Understanding human behavior is a cornerstone of observational practice, especially in psychotherapy. An important cue of behavior analysis is the dynamical changes of emotions during the conversation. Domain experts integrate emotional information in a highly nonlinear manner; thus, it is challenging to explicitly quantify the relationship between emotions and behaviors. In this work, we employ deep transfer learning to analyze their inferential capacity and contextual importance. We first train a network to quantify emotions from acoustic signals and then use information from the emotion recognition network as features for behavior recognition. We treat this emotion-related information as behavioral primitives and further train higher level layers towards behavior quantification. Through our analysis, we find that emotion-related information is an important cue for behavior recognition. Further, we investigate the importance of emotional-context in the expression of behavior by constraining (or not) the neural networks’ contextual view of the data. This demonstrates that the sequence of emotions is critical in behavior expression. To achieve these frameworks we employ hybrid architectures of convolutional networks and recurrent networks to extract emotion-related behavior primitives and facilitate automatic behavior recognition from speech.

Funder

Department of Defense

US Army Medical Research Acquisition Activity

Office of the Assistant Secretary of Defense for Health Affairs

Publisher

PeerJ

Subject

General Computer Science

Reference87 articles.

1. Using regional saliency for speech emotion recognition;Aldeneh,2017

2. Thin slices of expressive behavior as predictors of interpersonal consequences: a meta-analysis;Ambady;Psychological Bulletin,1992

3. Convoluted feelings convolutional and recurrent nets for detecting emotion from audio data;Anand;Technical report,2015

4. Agency context and tailored training in technology transfer: a pilot evaluation of motivational interviewing training for community counselors;Baer;Journal of Substance Abuse Treatment,2009

5. Does emotion cause behavior (apart from making people do stupid, destructive things);Baumeister,2010

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