
35 - Peter Hase on LLM Beliefs and Easy-to-Hard Generalization
AXRP - the AI X-risk Research Podcast
Understanding Belief Localization in Neural Networks
This chapter explores the complexities of how beliefs are represented within neural networks, challenging the notion of singular belief localization. It emphasizes the need for enhanced causal models and a detailed understanding of neural circuits to explain information flow and model behavior, particularly in language and generative models. Key discussions include the implications of editing model weights versus representations and the importance of effective communication across AI subfields for improved interpretability.
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