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Quantifying the Affective Gap: A Zero-Shot Evaluation of LLMs on Fine-Grained Emotion Taxonomies
A zero-shot evaluation of three leading commercial large language models on fine-grained emotion taxonomies.
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Quantifying the Affective Gap: A Zero-Shot Evaluation of LLMs on Fine-Grained Emotion Taxonomies
By Lawrence Obiuwevwi, Krzysztof J. Rechowicz, Jessica M. Johnson, Vikas Ashok, Sachin Shetty, Sampath JayarathnaarXiv
Read original article →This paper presents a unified zero-shot evaluation of three LLMs (Claude, ChatGPT, and Gemini) on a 13-class emotion classification task. The results show that all models excel on certain emotions but consistently fail on others.
The study highlights the limitations of current AI systems in fine-grained emotion classification.
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