Search Results for author: Florian Merkle

Found 4 papers, 0 papers with code

Less is More: The Influence of Pruning on the Explainability of CNNs

no code implementations17 Feb 2023 David Weber, Florian Merkle, Pascal Schöttle, Stephan Schlögl

To do so, we conducted a pre-study and two human-grounded experiments, assessing the effects of different pruning ratios on CNN explainability.

Network Pruning

On the Effect of Adversarial Training Against Invariance-based Adversarial Examples

no code implementations16 Feb 2023 Roland Rauter, Martin Nocker, Florian Merkle, Pascal Schöttle

Another type of adversarial examples are invariance-based adversarial examples, where the images are semantically modified such that the predicted class of the model does not change, but the class that is determined by humans does.

Pruning in the Face of Adversaries

no code implementations19 Aug 2021 Florian Merkle, Maximilian Samsinger, Pascal Schöttle

Available research on the impact of neural network pruning on the adversarial robustness is fragmentary and often does not adhere to established principles of robustness evaluation.

Adversarial Robustness Network Pruning

When Should You Defend Your Classifier -- A Game-theoretical Analysis of Countermeasures against Adversarial Examples

no code implementations17 Aug 2021 Maximilian Samsinger, Florian Merkle, Pascal Schöttle, Tomas Pevny

Adversarial machine learning, i. e., increasing the robustness of machine learning algorithms against so-called adversarial examples, is now an established field.

BIG-bench Machine Learning

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