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April 22, 2026
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Competing Biases underlie Overconfidence and Underconfidence in LLMs

Original Source

Nature Machine Intelligence

by Dharshan Kumaran
Competing Biases underlie Overconfidence and Underconfidence in LLMs
Tags:LLM

Original Content Credit

This summary is sourced from Nature Machine Intelligence. For the complete article with full details, research data, and author insights, please visit the original source.

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