Sup-Norm Convergence of Deep Neural Network Estimator for Nonparametric Regression by Adversarial Training

07/08/2023
by   Masaaki Imaizumi, et al.
0

We show the sup-norm convergence of deep neural network estimators with a novel adversarial training scheme. For the nonparametric regression problem, it has been shown that an estimator using deep neural networks can achieve better performances in the sense of the L2-norm. In contrast, it is difficult for the neural estimator with least-squares to achieve the sup-norm convergence, due to the deep structure of neural network models. In this study, we develop an adversarial training scheme and investigate the sup-norm convergence of deep neural network estimators. First, we find that ordinary adversarial training makes neural estimators inconsistent. Second, we show that a deep neural network estimator achieves the optimal rate in the sup-norm sense by the proposed adversarial training with correction. We extend our adversarial training to general setups of a loss function and a data-generating function. Our experiments support the theoretical findings.

READ FULL TEXT
research
06/04/2019

Adversarial Training Generalizes Data-dependent Spectral Norm Regularization

We establish a theoretical link between adversarial training and operato...
research
11/02/2020

Adversarial training for predictive tasks: theoretical analysis and limitations in the deterministic case

To train a deep neural network to mimic the outcomes of processing seque...
research
09/02/2023

Non-Asymptotic Bounds for Adversarial Excess Risk under Misspecified Models

We propose a general approach to evaluating the performance of robust es...
research
11/14/2022

An Inter-observer consistent deep adversarial training for visual scanpath prediction

The visual scanpath is a sequence of points through which the human gaze...
research
03/15/2021

Adversarial Training is Not Ready for Robot Learning

Adversarial training is an effective method to train deep learning model...
research
06/17/2019

MixUp as Directional Adversarial Training

In this work, we explain the working mechanism of MixUp in terms of adve...
research
05/19/2020

One Size Fits All: Can We Train One Denoiser for All Noise Levels?

When training an estimator such as a neural network for tasks like image...

Please sign up or login with your details

Forgot password? Click here to reset