Authors
Michael J Tanana, Christina S Soma, Patty B Kuo, Nicolas M Bertagnolli, Aaron Dembe, Brian T Pace, Vivek Srikumar, David C Atkins, Zac E Imel
Publication date
2021/10/22
Journal
Behavior research methods
Pages
1-14
Publisher
Springer US
Description
Emotional distress is a common reason for seeking psychotherapy, and sharing emotional material is central to the process of psychotherapy. However, systematic research examining patterns of emotional exchange that occur during psychotherapy sessions is often limited in scale. Traditional methods for identifying emotion in psychotherapy rely on labor-intensive observer ratings, client or therapist ratings obtained before or after sessions, or involve manually extracting ratings of emotion from session transcripts using dictionaries of positive and negative words that do not take the context of a sentence into account. However, recent advances in technology in the area of machine learning algorithms, in particular natural language processing, have made it possible for mental health researchers to identify sentiment, or emotion, in therapist–client interactions on a large scale that would be unattainable with …
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