Fluency without understanding: risks of large language models in mental healthcare
We always treat fluent language as a marker of intelligence and trustworthiness, often independent of factual accuracy. Large language models (LLMs) exploit this bias by producing confident, human-like texts that are perceived as intelligent and trustworthy, even when they lack accurate contextual understanding or are factually incorrect. This creates particular risks in mental healthcare, where communication, trust and context are central, and where errors are difficult to detect but highly con
