Adversarial Diffusion Attacks on Graph-based Traffic Prediction Models
Research output: Journal Publications and Reviews › RGC 21 - Publication in refereed journal › peer-review
Author(s)
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Detail(s)
Original language | English |
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Pages (from-to) | 1481-1495 |
Journal / Publication | IEEE Internet of Things Journal |
Volume | 11 |
Issue number | 1 |
Online published | 28 Jun 2023 |
Publication status | Published - 1 Jan 2024 |
Link(s)
Abstract
Real-time traffic prediction models play a pivotal role in smart mobility systems and have been widely used in route guidance, emerging mobility services, and advanced traffic management systems. With the availability of massive traffic data, neural network-based deep learning methods, especially graph convolutional networks (GCN) have demonstrated outstanding performance in mining spatio-temporal information and achieving high prediction accuracy. Recent studies reveal the vulnerability of GCN under adversarial attacks, while there is a lack of studies to understand the vulnerability issues of the GCN-based traffic prediction models. Given this, this paper proposes a new task – diffusion attack, to study the robustness of GCN-based traffic prediction models. The diffusion attack aims to select and simulate attacks on a small set of nodes to degrade the performance of the traffic prediction models, and it can be used to examine vulnerabilities of the traffic prediction models. We propose a novel attack algorithm, which consists of two major components: 1) approximating the gradient of the black-box prediction model with Simultaneous Perturbation Stochastic Approximation (SPSA); 2) adapting the knapsack greedy algorithm to select the attack nodes. The proposed algorithm is examined with three GCN-based traffic prediction models: St-Gcn, T-Gcn, and A3t-Gcn on four cities. The proposed algorithm demonstrates high efficiency in adversarial attack tasks under various scenarios, and it can still generate adversarial samples under the drop regularization such as DropOut, DropNode, and DropEdge. The research outcomes could help to improve the robustness of the GCN-based traffic prediction models and better protect the smart mobility systems. © 2023 IEEE. Personal use is permitted, but republication/redistribution requires IEEE permission.
Research Area(s)
- Adaptation models, Adversarial Attack, Deep Learning, Deep learning, Graph Convolutional Network, Intelligent Transportation Systems, Internet of Things, Prediction algorithms, Predictive models, Robustness, Task analysis, Traffic Prediction
Citation Format(s)
Adversarial Diffusion Attacks on Graph-based Traffic Prediction Models. / Zhu, Lyuyi; Feng, Kairui; Pu, Ziyuan et al.
In: IEEE Internet of Things Journal, Vol. 11, No. 1, 01.01.2024, p. 1481-1495.
In: IEEE Internet of Things Journal, Vol. 11, No. 1, 01.01.2024, p. 1481-1495.
Research output: Journal Publications and Reviews › RGC 21 - Publication in refereed journal › peer-review