深度时间点过程的对抗性攻击

Samira Khorshidi, Bao Wang, G. Mohler
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引用次数: 2

摘要

时间点过程有许多应用,从犯罪预测到地震余震序列建模。由于深度学习的灵活性和表达性,基于神经网络的方法最近显示出对点过程强度建模的希望。然而,对于这些模型在对抗性攻击和系统自然冲击方面的鲁棒性,缺乏研究。确切地说,虽然神经点过程在样本内测试中可能优于更简单的参数模型,但这些模型在遇到对抗性示例或急剧非平稳趋势时的表现如何仍然未知。目前的工作提出了几种针对深度神经网络建模的时间点过程的白盒和黑盒对抗性攻击。大量的实验证实,神经点过程的预测性能和参数化建模容易受到对抗性攻击。此外,我们以Covid-19大流行期间的犯罪数据集为例,评估了这些模型在非平稳突变存在下的脆弱性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adversarial Attacks on Deep Temporal Point Process
Temporal point processes have many applications, from crime forecasting to modeling earthquake aftershocks sequences. Due to the flexibility and expressiveness of deep learning, neural network-based approaches have recently shown promise for modeling point process intensities. However, there is a lack of research on the robustness of such models in regards to adversarial attacks and natural shocks to systems. Precisely, while neural point processes may outperform simpler parametric models on in-sample tests, how these models perform when encountering adversarial examples or sharp non-stationary trends remains unknown. Current work proposes several white-box and blackbox adversarial attacks against temporal point processes modeled by deep neural networks. Extensive experiments confirm that predictive performance and parametric modeling of neural point processes are vulnerable to adversarial attacks. Additionally, we evaluate the vulnerability and performance of these models in the presence of non-stationary abrupt changes, using the crimes dataset, during the Covid-19 pandemic, as an example.
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