Improved Estimation of Concentration Under ℓ_p-Norm Distance Metrics Using Half Spaces

03/24/2021
by   Jack Prescott, et al.
2

Concentration of measure has been argued to be the fundamental cause of adversarial vulnerability. Mahloujifar et al. presented an empirical way to measure the concentration of a data distribution using samples, and employed it to find lower bounds on intrinsic robustness for several benchmark datasets. However, it remains unclear whether these lower bounds are tight enough to provide a useful approximation for the intrinsic robustness of a dataset. To gain a deeper understanding of the concentration of measure phenomenon, we first extend the Gaussian Isoperimetric Inequality to non-spherical Gaussian measures and arbitrary ℓ_p-norms (p ≥ 2). We leverage these theoretical insights to design a method that uses half-spaces to estimate the concentration of any empirical dataset under ℓ_p-norm distance metrics. Our proposed algorithm is more efficient than Mahloujifar et al.'s, and our experiments on synthetic datasets and image benchmarks demonstrate that it is able to find much tighter intrinsic robustness bounds. These tighter estimates provide further evidence that rules out intrinsic dataset concentration as a possible explanation for the adversarial vulnerability of state-of-the-art classifiers.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/29/2019

Empirically Measuring Concentration: Fundamental Limits on Intrinsic Robustness

Many recent works have shown that adversarial examples that fool classif...
research
03/01/2020

Understanding the Intrinsic Robustness of Image Distributions using Conditional Generative Models

Starting with Gilmer et al. (2018), several works have demonstrated the ...
research
09/06/2022

Concentration of polynomial random matrices via Efron-Stein inequalities

Analyzing concentration of large random matrices is a common task in a w...
research
04/27/2018

Convergence and Concentration of Empirical Measures under Wasserstein Distance in Unbounded Functional Spaces

We provide upper bounds of the expected Wasserstein distance between a p...
research
07/14/2022

Provably Adversarially Robust Nearest Prototype Classifiers

Nearest prototype classifiers (NPCs) assign to each input point the labe...
research
10/18/2018

Concentration of the Frobenius norms of pseudoinverses

In many applications it is useful to replace the Moore-Penrose pseudoinv...
research
10/18/2018

Concentration of the Frobenius norms of generalized matrix inverses

In many applications it is useful to replace the Moore-Penrose pseudoinv...

Please sign up or login with your details

Forgot password? Click here to reset