3min chapter

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#91 - HATTIE ZHOU - Teaching Algorithmic Reasoning via In-context Learning #NeurIPS

Machine Learning Street Talk (MLST)

CHAPTER

Deep Learning Models Do Not Reason

It's often said that deep learning models do not reason. And I think what people mean by that is that you get this phenomenon of shortcut learning and models do the right things for the wrong reasons. It seems to me that what we're doing here is by imputing the kind of the structure of how to reason into the problems, we're robustifying its behavior out of distribution. But an interesting question, I think, is if you can get this behavior using in-context learning, which I think you,. I suspect you can't really do from fine tuning or some sort of weight training. You'll most likely just overfit on the training distribution.

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