Companion Proceedings of the ACM Web Conference 2024 2024
DOI: 10.1145/3589335.3651902
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English Prompts are Better for NLI-based Zero-Shot Emotion Classification than Target-Language Prompts

Patrick Bareiß,
Roman Klinger,
Jeremy Barnes

Abstract: Emotion classification in text is a challenging task due to the processes involved when interpreting a textual description of a potential emotion stimulus. In addition, the set of emotion categories is highly domain-specific. For instance, literature analysis might require the use of aesthetic emotions (e.g., finding something beautiful), and social media analysis could benefit from fine-grained sets (e.g., separating anger from annoyance) than only those that represent basic categories as they have been propo… Show more

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