Physics-guided Active Sample Reweighting for Urban Flow Prediction
Wei Jiang, Tong Chen, Guanhua Ye, Wentao Zhang, Lizhen Cui, Zi Huang, and Hongzhi Yin

TL;DR
This paper introduces a physics-guided active sample reweighting framework to improve urban flow prediction, addressing data sparsity and noise issues in physics-informed models, leading to more accurate and robust predictions.
Contribution
The paper proposes a novel discretized physics-guided network and an active sample reweighting framework to enhance urban flow prediction accuracy and robustness under data imperfections.
Findings
Achieves state-of-the-art performance on four real-world datasets.
Demonstrates improved robustness compared to existing methods.
Effectively handles data sparsity and noise in urban flow prediction.
Abstract
Urban flow prediction is a spatio-temporal modeling task that estimates the throughput of transportation services like buses, taxis, and ride-sharing, where data-driven models have become the most popular solution in the past decade. Meanwhile, the implicitly learned mapping between historical observations to the prediction targets tend to over-simplify the dynamics of real-world urban flows, leading to suboptimal predictions. Some recent spatio-temporal prediction solutions bring remedies with the notion of physics-guided machine learning (PGML), which describes spatio-temporal data with nuanced and principled physics laws, thus enhancing both the prediction accuracy and interpretability. However, these spatio-temporal PGML methods are built upon a strong assumption that the observed data fully conforms to the differential equations that define the physical system, which can quickly…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Hydrological Forecasting Using AI · Meteorological Phenomena and Simulations
