Entropy-Guided Regime Switching for Railway Passenger Flow Forecasting: An Adaptive EA-ARIMA-Informer Framework
Silun Tan, Xinghua Shan, Zhengzheng Wei, Shuo Zhao, Jinfei Wu

TL;DR
This paper introduces a new forecasting framework for railway passenger flows that adapts to disruptions using entropy-based regime switching, improving accuracy even during rare events.
Contribution
The novel Conditional Entropy Growth Factor (CEGF) and entropy-guided regime switching mechanism enable adaptive and interpretable forecasting during disruptions.
Findings
EA-ARIMA-Informer achieves a MAPE of 4.39% for large cities and 7.82% for small cities, outperforming existing models.
CEGF-guided regime switching and entropy-based features significantly improve forecasting accuracy during disruptions.
The framework is validated on a dataset covering nearly 300 Chinese cities over three years.
Abstract
Railway passenger flow forecasting plays a critical role in operational efficiency and resource allocation for transportation systems. However, existing deep learning approaches suffer significant performance degradation when facing rare but high-impact events, primarily due to sample scarcity and their inability to distinguish between routine patterns and disruption regimes. To address these challenges, this study introduces EA-ARIMA-Informer, an adaptive forecasting framework that integrates entropy-augmented ARIMA with Informer through an entropy-guided regime-switching mechanism. The passenger flow series is characterized through a multi-dimensional entropy space comprising four complementary measures: Sample Entropy quantifies local regularity and predictability, Permutation Entropy captures the complexity of ordinal dynamics, Transfer Entropy measures causal information flow from…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Human Mobility and Location-Based Analysis · Railway Systems and Energy Efficiency
