Predicting Subway Passenger Flows under Incident Situation with Causality
Xiannan Huang, Shuhan Qiu, Quan Yuan, Chao Yang

TL;DR
This paper introduces a two-stage causal approach for real-time subway passenger flow prediction during incidents, improving accuracy and interpretability over traditional models by separately modeling normal conditions and incident effects.
Contribution
The paper presents a novel two-stage method combining normal flow prediction with causal effect modeling using synthetic control, addressing data scarcity and interpretability issues during incidents.
Findings
Enhanced prediction accuracy during incidents
Improved interpretability of causal effects
Identification of key incident influencing factors
Abstract
In the context of rail transit operations, real-time passenger flow prediction is essential; however, most models primarily focus on normal conditions, with limited research addressing incident situations. There are several intrinsic challenges associated with prediction during incidents, such as a lack of interpretability and data scarcity. To address these challenges, we propose a two-stage method that separates predictions under normal conditions and the causal effects of incidents. First, a normal prediction model is trained using data from normal situations. Next, the synthetic control method is employed to identify the causal effects of incidents, combined with placebo tests to determine significant levels of these effects. The significant effects are then utilized to train a causal effect prediction model, which can forecast the impact of incidents based on features of the…
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