4min chapter

Machine Learning Street Talk (MLST) cover image

Neel Nanda - Mechanistic Interpretability

Machine Learning Street Talk (MLST)

CHAPTER

Groking: A Neural Network's Learning Process

We're using stochastic gradient descent so we're moving all of these weights around and the inductive prior is also very important. The model memorizes first but it ultimately prefers to generalize but it's only a mild preference because you know grokings a little bit cheating. We use weight decay dropout also works in this particular case. So the model very slowly interpolates very very slightly improving test test loss very slowly improving train loss until it eventually gets there. This phase transition and cleanup which leads to the seemingly sudden grokig behavior okay.

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