
40 - Jason Gross on Compact Proofs and Interpretability
AXRP - the AI X-risk Research Podcast
Intro
This chapter delves into the connection between mechanistic interpretability and proof theory within large neural networks. The discussion highlights the importance of compact proofs as benchmarks for evaluating mechanistic explanations, while addressing challenges and insights related to non-linearities in model behavior.
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