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Correlation Analysis of Adversarial Attack in Time Series Classification

Machine Learning 2024-08-22 v1 Cryptography and Security

Abstract

This study investigates the vulnerability of time series classification models to adversarial attacks, with a focus on how these models process local versus global information under such conditions. By leveraging the Normalized Auto Correlation Function (NACF), an exploration into the inclination of neural networks is conducted. It is demonstrated that regularization techniques, particularly those employing Fast Fourier Transform (FFT) methods and targeting frequency components of perturbations, markedly enhance the effectiveness of attacks. Meanwhile, the defense strategies, like noise introduction and Gaussian filtering, are shown to significantly lower the Attack Success Rate (ASR), with approaches based on noise introducing notably effective in countering high-frequency distortions. Furthermore, models designed to prioritize global information are revealed to possess greater resistance to adversarial manipulations. These results underline the importance of designing attack and defense mechanisms, informed by frequency domain analysis, as a means to considerably reinforce the resilience of neural network models against adversarial threats.

Keywords

Cite

@article{arxiv.2408.11264,
  title  = {Correlation Analysis of Adversarial Attack in Time Series Classification},
  author = {Zhengyang Li and Wenhao Liang and Chang Dong and Weitong Chen and Dong Huang},
  journal= {arXiv preprint arXiv:2408.11264},
  year   = {2024}
}

Comments

15 pages, 7 figures

R2 v1 2026-06-28T18:18:52.897Z