EBM Life Cycle: MCMC Strategies for Synthesis, Defense, and Density Modeling

05/24/2022
by   Mitch Hill, et al.
5

This work presents strategies to learn an Energy-Based Model (EBM) according to the desired length of its MCMC sampling trajectories. MCMC trajectories of different lengths correspond to models with different purposes. Our experiments cover three different trajectory magnitudes and learning outcomes: 1) shortrun sampling for image generation; 2) midrun sampling for classifier-agnostic adversarial defense; and 3) longrun sampling for principled modeling of image probability densities. To achieve these outcomes, we introduce three novel methods of MCMC initialization for negative samples used in Maximum Likelihood (ML) learning. With standard network architectures and an unaltered ML objective, our MCMC initialization methods alone enable significant performance gains across the three applications that we investigate. Our results include state-of-the-art FID scores for unnormalized image densities on the CIFAR-10 and ImageNet datasets; state-of-the-art adversarial defense on CIFAR-10 among purification methods and the first EBM defense on ImageNet; and scalable techniques for learning valid probability densities. Code for this project can be found at https://github.com/point0bar1/ebm-life-cycle.

READ FULL TEXT

page 2

page 16

page 17

page 18

page 20

page 21

page 22

page 23

research
03/29/2019

On the Anatomy of MCMC-based Maximum Likelihood Learning of Energy-Based Models

This study investigates the effects Markov Chain Monte Carlo (MCMC) samp...
research
05/27/2020

Stochastic Security: Adversarial Defense Using Long-Run Dynamics of Energy-Based Models

The vulnerability of deep networks to adversarial attacks is a central p...
research
11/30/2018

Adversarial Defense by Stratified Convolutional Sparse Coding

We propose an adversarial defense method that achieves state-of-the-art ...
research
02/24/2022

Clarifying MCMC-based training of modern EBMs : Contrastive Divergence versus Maximum Likelihood

The Energy-Based Model (EBM) framework is a very general approach to gen...
research
07/12/2021

Detect and Defense Against Adversarial Examples in Deep Learning using Natural Scene Statistics and Adaptive Denoising

Despite the enormous performance of deepneural networks (DNNs), recent s...
research
04/22/2019

On Learning Non-Convergent Short-Run MCMC Toward Energy-Based Model

This paper studies a curious phenomenon in learning energy-based model (...
research
10/10/2019

Defending Neural Backdoors via Generative Distribution Modeling

Neural backdoor attack is emerging as a severe security threat to deep l...

Please sign up or login with your details

Forgot password? Click here to reset