LLMs struggle to infer pragmatic meaning from non-verbal responses alone, showing accuracy drops of up to 60 percentage points versus verbal responses, though in-context learning improves results.
S umm S creen: A Dataset for Abstractive Screenplay Summarization
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Unveiling the Limits of Large Language Models in Inferring Pragmatic Meaning from Non-Verbal Responses
LLMs struggle to infer pragmatic meaning from non-verbal responses alone, showing accuracy drops of up to 60 percentage points versus verbal responses, though in-context learning improves results.