Code for the paper: Adversarial Machine Learning: Bayesian Perspectives

Overview

Code for the paper: Adversarial Machine Learning: Bayesian Perspectives

This repository contains code for reproducing the experiments in the ** Adversarial Machine Learning: Bayesian Perspectives** paper.

  • The operations folder contains the code corresponding to the ML robustification approach during operations

  • The training folder contains the code corresponding to the ML robustification approach during training

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