Practicing with Language Models Cultivates Human Empathic Communication
arXiv cs.CL / 3/17/2026
📰 NewsIdeas & Deep AnalysisTools & Practical UsageModels & Research
Key Points
- LLMs may be judged more empathic than humans in blinded evaluations, but AI attribution reduces perceived empathy.
- The Lend an Ear platform was built to study empathic expression, collecting 33,938 messages across 2,904 conversations involving 968 participants and their LLM partners.
- The study derives a data-driven taxonomy of idiomatic empathic expressions used in naturalistic dialogue.
- A pre-registered randomized experiment shows that personalized, brief coaching to improve empathetic communication significantly increases alignment with normative empathic patterns compared with a control and with non-personalized, video-based feedback.
- A silent empathy effect is observed: people feel empathy but often do not express it, while observers can reliably identify responses aligned with normative empathic communication, supporting scalable AI-based training to cultivate empathy.