Recognizing Emotion Regulation Strategies from Human Behavior with Large Language Models
Philipp M\"uller, Alexander Heimerl, Sayed Muddashir Hossain, Lea, Siegel, Jan Alexandersson, Patrick Gebhard, Elisabeth Andr\'e, Tanja, Schneeberger

TL;DR
This study demonstrates that fine-tuned Large Language Models can accurately classify emotion regulation strategies from human behavior data, advancing affective computing applications in social and therapeutic contexts.
Contribution
It introduces a novel approach using fine-tuned LLMs to classify emotion regulation strategies from verbal and nonverbal cues without relying on post-interaction interviews.
Findings
Llama2-7B achieved 84% accuracy in classifying emotion regulation strategies.
Modeling verbal behavior significantly improves classification performance.
The approach outperforms previous Bayesian Network methods.
Abstract
Human emotions are often not expressed directly, but regulated according to internal processes and social display rules. For affective computing systems, an understanding of how users regulate their emotions can be highly useful, for example to provide feedback in job interview training, or in psychotherapeutic scenarios. However, at present no method to automatically classify different emotion regulation strategies in a cross-user scenario exists. At the same time, recent studies showed that instruction-tuned Large Language Models (LLMs) can reach impressive performance across a variety of affect recognition tasks such as categorical emotion recognition or sentiment analysis. While these results are promising, it remains unclear to what extent the representational power of LLMs can be utilized in the more subtle task of classifying users' internal emotion regulation strategy. To close…
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Taxonomy
TopicsSentiment Analysis and Opinion Mining · Mental Health via Writing
