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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

1 min read
Sourcer/openai

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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By the gotcontext.ai team (editorial standards)
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AI models struggle with refusal: why abstention beats hallucination — gotcontext.ai