An Explainable Adversarial Robustness Metric for Deep Learning Neural Networks
Chirag Agarwal, Bo Dong, Dan Schonfeld, Anthony Hoogs

TL;DR
This paper introduces Noise Sensitivity Score (NSS), a novel explainable metric for evaluating deep neural networks' robustness against adversarial attacks, validated across multiple datasets and architectures.
Contribution
The paper proposes NSS, an explainable and mathematically grounded robustness metric for DNNs, addressing the gap in existing evaluation methods for adversarial performance.
Findings
NSS effectively quantifies DNN robustness on specific inputs.
A dataset-level robustness metric based on skewness is introduced.
Extensive experiments validate the generalization of the proposed metrics.
Abstract
Deep Neural Networks(DNN) have excessively advanced the field of computer vision by achieving state of the art performance in various vision tasks. These results are not limited to the field of vision but can also be seen in speech recognition and machine translation tasks. Recently, DNNs are found to poorly fail when tested with samples that are crafted by making imperceptible changes to the original input images. This causes a gap between the validation and adversarial performance of a DNN. An effective and generalizable robustness metric for evaluating the performance of DNN on these adversarial inputs is still missing from the literature. In this paper, we propose Noise Sensitivity Score (NSS), a metric that quantifies the performance of a DNN on a specific input under different forms of fix-directional attacks. An insightful mathematical explanation is provided for deeply…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Anomaly Detection Techniques and Applications · Integrated Circuits and Semiconductor Failure Analysis
