AI models struggle with refusal: why abstention beats hallucination
Large language models often generate plausible-sounding answers rather than admit uncertainty. A growing chorus of AI practitioners argues that explicit refusal mechanisms could reduce costly hallucinations in production
Large language models generate answers to nearly every question, even when they lack reliable information to do so. This tendency to produce confident-sounding but false responses, known as hallucination, has become a central reliability problem for teams deploying AI in customer-facing and mission-...
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