AI Article Synopsis

  • - Despite their success, deep learning models struggle with robustness, especially against adversarial attacks, which raises concerns about their reliability in critical applications.
  • - The paper proposes an information geometric framework to set clear robustness standards for l2 white-box attacks in multi-class classifications, using the Fisher information metric and specific criteria for the input-output Jacobian.
  • - The proposed method shows significant enhancements in model robustness on MNIST and CIFAR-10 datasets against various adversarial attacks, outperforming existing techniques like defensive distillation and Jacobian regularization, while still achieving high accuracy.

Article Abstract

Despite their remarkable performance, deep learning models still lack robustness guarantees, particularly in the presence of adversarial examples. This significant vulnerability raises concerns about their trustworthiness and hinders their deployment in critical domains that require certified levels of robustness. In this paper, we introduce an information geometric framework to establish precise robustness criteria for l2 white-box attacks in a multi-class classification setting. We endow the output space with the Fisher information metric and derive criteria on the input-output Jacobian to ensure robustness. We show that model robustness can be achieved by constraining the model to be partially isometric around the training points. We evaluate our approach using MNIST and CIFAR-10 datasets against adversarial attacks, revealing its substantial improvements over defensive distillation and Jacobian regularization for medium-sized perturbations and its superior robustness performance to adversarial training for large perturbations, all while maintaining the desired accuracy.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10888249PMC
http://dx.doi.org/10.3390/e26020103DOI Listing

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