Some Statistical Results on Deep Learning: Interpolation, Optimality and Sparsity
Presenter
November 13, 2019
Abstract
This talk discusses three aspects of deep learning from a statistical perspective: interpolation, optimality and sparsity. The first one attempts to interpret the double descent phenomenon by precisely characterizing a U-shaped curve within the âover-fitting regime,â while the second one focuses on the statistical optimality of neural network classification in a student-teacher framework. This talk is concluded by proposing sparsity induced training of neural network with statistical guarantee.Â