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When Explainability Meets Adversarial Learning: Detecting Adversarial Examples using SHAP Signatures

Gil Fidel, Ron Bitton, Asaf Shabtai

2020121 citationsDOI

Abstract

State-of-the-art deep neural networks (DNNs) are highly effective in solving many complex real-world problems. However, these models are vulnerable to adversarial perturbation attacks, and despite the plethora of research in this domain, to this day, adversaries still have the upper hand in the cat and mouse game of adversarial example generation methods vs. detection and prevention methods. In this research, we present a novel detection method that uses Shapley Additive Explanations (SHAP) values computed for the internal layers of a DNN classifier to discriminate between normal and adversarial inputs. We evaluate our method by building an extensive dataset of adversarial examples over the popular CIFAR-10 and MNIST datasets, and training a neural network-based detector to distinguish between normal and adversarial inputs. We evaluate our detector against adversarial examples generated by diverse state-of-the-art attacks and demonstrate its high detection accuracy and strong generalization ability to adversarial inputs generated with different attack methods.

Topics & Concepts

Adversarial systemMNIST databaseDeep neural networksComputer scienceClassifier (UML)Artificial intelligenceMachine learningGeneralizationDetectorArtificial neural networkDeep learningPattern recognition (psychology)MathematicsTelecommunicationsMathematical analysisAdversarial Robustness in Machine LearningExplainable Artificial Intelligence (XAI)Anomaly Detection Techniques and Applications
When Explainability Meets Adversarial Learning: Detecting Adversarial Examples using SHAP Signatures | Litcius