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Adversarial Robustness as a Prior for Learned Representations

About

An important goal in deep learning is to learn versatile, high-level feature representations of input data. However, standard networks' representations seem to possess shortcomings that, as we illustrate, prevent them from fully realizing this goal. In this work, we show that robust optimization can be re-cast as a tool for enforcing priors on the features learned by deep neural networks. It turns out that representations learned by robust models address the aforementioned shortcomings and make significant progress towards learning a high-level encoding of inputs. In particular, these representations are approximately invertible, while allowing for direct visualization and manipulation of salient input features. More broadly, our results indicate adversarial robustness as a promising avenue for improving learned representations. Our code and models for reproducing these results is available at https://git.io/robust-reps .

Logan Engstrom, Andrew Ilyas, Shibani Santurkar, Dimitris Tsipras, Brandon Tran, Aleksander Madry• 2019

Related benchmarks

TaskDatasetResultRank
Feature InversionImageNet
SSIM9.6
20
Feature InversionCUB-200
SSIM8.9
20
Feature InversionPets
SSIM9.7
20
Feature InversionDogs
SSIM10.1
20
Feature InversionCIFAR-100
SSIM10.1
15
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