A high-signal person to follow for the part of alignment research that asks whether a model’s stated reasoning can actually be trusted and measured.
Researcher Profile
Editor reviewedCarol Chen
Alignment via AI feedback (Constitutional AI)
Reasoning-faithfulness researcher at Anthropic
A high-signal page for the reasoning-faithfulness thread inside Anthropic, especially where question decomposition is used to make model reasoning easier to trust and inspect.
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Known For
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01
Question decomposition
02
Reasoning faithfulness
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Constitutional AI
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Alignment via AI feedback (Constitutional AI)
05
Constitutional AI: Harmlessness from AI Feedback
06
Training a Helpful and Harmless Assistant with Reinforcement Learning from Human Feedback
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