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n-ML: Mitigating Adversarial Examples via Ensembles of Topologically Manipulated Classifiers #16

@Apromixately

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@Apromixately

Name: n-ML: Mitigating Adversarial Examples via Ensembles of Topologically Manipulated Classifiers
Authors: Mahmood Sharif, Lujo Bauer, Michael K. Reiter

Paper: https://arxiv.org/pdf/1912.09059.pdf

Code: -

Venue: -

Does the code implement the robust-ml API and include pre-trained models: -

Dataset: MNIST, CIFAR10, GTSRB

Threat model: white box, gray box, black box

Natural accuracy: e.g. CIFAR10 / black box / L_inf <= 8/255: 94.50 %

Claims: e.g. CIFAR10 / black box / L_inf <= 8/255: 100.00 %

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