Provably robust deep generative models

04/22/2020
by   Filipe Condessa, et al.
0

Recent work in adversarial attacks has developed provably robust methods for training deep neural network classifiers. However, although they are often mentioned in the context of robustness, deep generative models themselves have received relatively little attention in terms of formally analyzing their robustness properties. In this paper, we propose a method for training provably robust generative models, specifically a provably robust version of the variational auto-encoder (VAE). To do so, we first formally define a (certifiably) robust lower bound on the variational lower bound of the likelihood, and then show how this bound can be optimized during training to produce a robust VAE. We evaluate the method on simple examples, and show that it is able to produce generative models that are substantially more robust to adversarial attacks (i.e., an adversary trying to perturb inputs so as to drastically lower their likelihood under the model).

READ FULL TEXT
research
02/19/2018

Are Generative Classifiers More Robust to Adversarial Attacks?

There is a rising interest in studying the robustness of deep neural net...
research
06/13/2019

Reweighted Expectation Maximization

Training deep generative models with maximum likelihood remains a challe...
research
05/11/2019

Boosting Generative Models by Leveraging Cascaded Meta-Models

Deep generative models are effective methods of modeling data. However, ...
research
10/05/2020

Bigeminal Priors Variational auto-encoder

Variational auto-encoders (VAEs) are an influential and generally-used c...
research
06/16/2023

Vacant Holes for Unsupervised Detection of the Outliers in Compact Latent Representation

Detection of the outliers is pivotal for any machine learning model depl...
research
07/16/2020

Detecting Out-of-distribution Samples via Variational Auto-encoder with Reliable Uncertainty Estimation

In unsupervised learning, variational auto-encoders (VAEs) are an influe...
research
12/05/2016

Authoring image decompositions with generative models

We show how to extend traditional intrinsic image decompositions to inco...

Please sign up or login with your details

Forgot password? Click here to reset