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Neel Nanda - Mechanistic Interpretability (Sparse Autoencoders)

Machine Learning Street Talk (MLST)

CHAPTER

Neural Representations: Monosemantic vs. Polysemantic

This chapter explores the intricate dynamics of monosemantic and polysemantic representations in neural networks, highlighting how neurons function as detectors for various inputs. The discussion includes the concept of superposition in neural architectures, illustrating how models can efficiently handle a wide range of information while posing challenges for interpretation. Additionally, it draws parallels between neural network behavior and biological evolution, revealing the complexities inherent in both systems' growth and abstraction capabilities.

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