CLAIHCSep 4, 2023

Fine-grained Affective Processing Capabilities Emerging from Large Language Models

arXiv:2309.01664v142 citations
Originality Incremental advance
AI Analysis

This demonstrates the potential of large language models for simulating human emotions, with applications in sentiment analysis and social robotics.

The paper investigates ChatGPT's zero-shot ability to perform affective computing tasks, showing it can conduct sentiment analysis in Valence, Arousal, and Dominance dimensions, represent emotions, and implement appraisal-based emotion elicitation using the OCC model.

Large language models, in particular generative pre-trained transformers (GPTs), show impressive results on a wide variety of language-related tasks. In this paper, we explore ChatGPT's zero-shot ability to perform affective computing tasks using prompting alone. We show that ChatGPT a) performs meaningful sentiment analysis in the Valence, Arousal and Dominance dimensions, b) has meaningful emotion representations in terms of emotion categories and these affective dimensions, and c) can perform basic appraisal-based emotion elicitation of situations based on a prompt-based computational implementation of the OCC appraisal model. These findings are highly relevant: First, they show that the ability to solve complex affect processing tasks emerges from language-based token prediction trained on extensive data sets. Second, they show the potential of large language models for simulating, processing and analyzing human emotions, which has important implications for various applications such as sentiment analysis, socially interactive agents, and social robotics.

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