Gitta Kutyniok, Discussion of: .Nonparametric regression using deep neural networks with ReLU activation function., Annals of statistics , 48(4), 2020, pp. 1902-1905
I would like to congratulate Johannes Schmidt.Hieber on a very interesting paper in which he considers regression functions belonging to the class of so-called compositional functions and analyzes the ability of estimators based on the multivariate nonparametric regression model of deep neural networks to achieve minimax rates of convergence. In my discussion, I will first regard such a type of result from the general viewpoint of the theoretical foundations of deep neural networks. This will be followed by a discussion from the viewpoint of expressivity, optimization and generalization. Finally, I will consider some specific aspects of the main result.