The Geometry of Adversarial Training in Binary Classification

11/26/2021
by   Leon Bungert, et al.
0

We establish an equivalence between a family of adversarial training problems for non-parametric binary classification and a family of regularized risk minimization problems where the regularizer is a nonlocal perimeter functional. The resulting regularized risk minimization problems admit exact convex relaxations of the type L^1+ (nonlocal) TV, a form frequently studied in image analysis and graph-based learning. A rich geometric structure is revealed by this reformulation which in turn allows us to establish a series of properties of optimal solutions of the original problem, including the existence of minimal and maximal solutions (interpreted in a suitable sense), and the existence of regular solutions (also interpreted in a suitable sense). In addition, we highlight how the connection between adversarial training and perimeter minimization problems provides a novel, directly interpretable, statistical motivation for a family of regularized risk minimization problems involving perimeter/total variation. The majority of our theoretical results are independent of the distance used to define adversarial attacks.

READ FULL TEXT
research
04/28/2023

On the existence of solutions to adversarial training in multiclass classification

We study three models of the problem of adversarial training in multicla...
research
10/26/2020

Asymptotic Behavior of Adversarial Training in Binary Classification

It is widely known that several machine learning models are susceptible ...
research
06/07/2018

On Adversarial Risk and Training

In this work we formally define the notions of adversarial perturbations...
research
04/27/2022

The Multimarginal Optimal Transport Formulation of Adversarial Multiclass Classification

We study a family of adversarial multiclass classification problems and ...
research
06/18/2022

Existence and Minimax Theorems for Adversarial Surrogate Risks in Binary Classification

Adversarial training is one of the most popular methods for training met...
research
05/30/2023

It begins with a boundary: A geometric view on probabilistically robust learning

Although deep neural networks have achieved super-human performance on m...
research
06/17/2019

MixUp as Directional Adversarial Training

In this work, we explain the working mechanism of MixUp in terms of adve...

Please sign up or login with your details

Forgot password? Click here to reset