
35 - Peter Hase on LLM Beliefs and Easy-to-Hard Generalization
AXRP - the AI X-risk Research Podcast
Understanding Neural Representations
This chapter explores advancements in neural network representation, emphasizing feature representations as neuron combinations rather than direct mappings. It discusses the challenges of interpretability and the potential risks of imposing human concepts on neural models, along with comparing supervised and unsupervised probing methods. Additionally, the chapter highlights the complexities in model interpretability, focusing on different methodologies for assessing and refining model behavior based on feature extraction.
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