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Episode 32: Jamie Simon, UC Berkeley: On theoretical principles for how neural networks learn and generalize

Generally Intelligent

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The Importance of Generalization in Model Neural Regression

The eigen learning framework is a theoretical tool that lets you say given some structure on your data how will you generalize when you train your algorithm. The equations are more or less instantaneous and much faster than actually running kernel regression but even better than being fast it's simple and analytically tractable so both in the eigenlearning paper and in follow-ups I've like used these equations to derive useful properties of the generalization of model neural regression systems.

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