2min snip

Machine Learning Street Talk (MLST) cover image

Neel Nanda - Mechanistic Interpretability

Machine Learning Street Talk (MLST)

NOTE

Models: Linear Representation vs Geometric Representation

Models have linear representations and capture features as linear directions in space. The author discusses the concept of features and how they are represented in models. They provide examples of what features can be in various contexts, such as images and programming. The author also mentions the classic 'word2vec' framing where features are represented as linear combinations of directions in space.

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