
Episode 32: Jamie Simon, UC Berkeley: On theoretical principles for how neural networks learn and generalize
Generally Intelligent
Estimating Generalization without Training
A theoretical tool called the omniscient risk predictor allows the computation of estimators for nsc and function smoothness without the need for training data. This tool provides a way to generalize model behavior based on the data structure, enabling fast, simple, and analytically tractable predictions. It simplifies the process of understanding the generalization properties of models like neural regression systems.
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