Anomaly Detection in Road Networks Using Sliding-Window Tensor Factorization

March 07, 2018 Β· Declared Dead Β· πŸ› IEEE transactions on intelligent transportation systems (Print)

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Authors Ming Xu, Jianping Wu, Haohan Wang, Mengxin Cao arXiv ID 1803.04534 Category physics.soc-ph Cross-listed cs.SI Citations 34 Venue IEEE transactions on intelligent transportation systems (Print) Last Checked 3 months ago
Abstract
Anomaly detection in road networks is vital for traffic management and emergency response. However, existing approaches do not directly address multiple anomaly types. We propose a tensor-based spatio-temporal model for detecting multiple types of anomalies in road networks. First, we represent network traffic data as a 3rd-order tensor. Next, we acquire spatial and multi-scale temporal patterns of traffic variations via a novel, computationally efficient tensor factorization algorithm: sliding window tensor factorization. Then, from the factorization results, we can identify different anomaly types by measuring deviations from different spatial and temporal patterns. Finally, we discover path-level anomalies by formulating anomalous path inference as a linear program that solves for the best matched paths of anomalous links. We evaluate the proposed methods via both synthetic experiments and case studies based on a real-world vehicle trajectory dataset, demonstrating advantages of our approach over baselines.
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