ArXiv TLDR

AI generates well-liked but templatic empathic responses

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2604.08479

Emma Gueorguieva, Hongli Zhan, Jina Suh, Javier Hernandez, Tatiana Lau + 2 more

cs.CL

TLDR

AI-generated empathic responses are well-liked but highly formulaic, consistently deploying a specific template unlike diverse human replies.

Key contributions

  • People rate LLM responses as more empathic than human-written ones for emotional support.
  • A taxonomy of 10 empathic language tactics was developed to analyze responses.
  • LLM responses are highly formulaic, matching a specific template 83-90% of the time.
  • Human-written empathic responses exhibit significantly greater linguistic diversity.

Why it matters

This paper uncovers why LLMs excel at generating empathic responses: they leverage a consistent, well-liked template. Understanding this formulaic approach is vital for developing more nuanced and genuinely supportive AI systems. It highlights both the current success and potential limitations of AI in emotional support contexts.

Original Abstract

Recent research shows that greater numbers of people are turning to Large Language Models (LLMs) for emotional support, and that people rate LLM responses as more empathic than human-written responses. We suggest a reason for this success: LLMs have learned and consistently deploy a well-liked template for expressing empathy. We develop a taxonomy of 10 empathic language "tactics" that include validating someone's feelings and paraphrasing, and apply this taxonomy to characterize the language that people and LLMs produce when writing empathic responses. Across a set of 2 studies comparing a total of n = 3,265 AI-generated (by six models) and n = 1,290 human-written responses, we find that LLM responses are highly formulaic at a discourse functional level. We discovered a template -- a structured sequence of tactics -- that matches between 83--90% of LLM responses (and 60--83\% in a held out sample), and when those are matched, covers 81--92% of the response. By contrast, human-written responses are more diverse. We end with a discussion of implications for the future of AI-generated empathy.

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