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CausalTAD: Causal Implicit Generative Model for Debiased Online Trajectory Anomaly Detection

Abstract

Trajectory anomaly detection, aiming to estimate the anomaly risk of trajectories given the Source-Destination (SD) pairs, has become a critical problem for many real-world applications. Existing solutions directly train a generative model for observed trajectories and calculate the conditional generative probability P(TC)P({T}|{C}) as the anomaly risk, where T{T} and C{C} represent the trajectory and SD pair respectively. However, we argue that the observed trajectories are confounded by road network preference which is a common cause of both SD distribution and trajectories. Existing methods ignore this issue limiting their generalization ability on out-of-distribution trajectories. In this paper, we define the debiased trajectory anomaly detection problem and propose a causal implicit generative model, namely CausalTAD, to solve it. CausalTAD adopts do-calculus to eliminate the confounding bias of road network preference and estimates P(Tdo(C))P({T}|do({C})) as the anomaly criterion. Extensive experiments show that CausalTAD can not only achieve superior performance on trained trajectories but also generally improve the performance of out-of-distribution data, with improvements of 2.1%5.7%2.1\% \sim 5.7\% and 10.6%32.7%10.6\% \sim 32.7\% respectively.

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