GeoMAE: Masking Representation Learning for Spatio-Temporal Graph Forecasting with Missing Values
Songyu Ke, Chenyu Wu, Yuxuan Liang, Huiling Qin, Junbo Zhang, Yu Zheng

TL;DR
GeoMAE is a self-supervised learning model designed to improve spatio-temporal graph forecasting with missing data, outperforming existing methods by up to 13.20% on real datasets.
Contribution
It introduces a novel masking autoencoder-inspired framework for robust spatio-temporal representation learning in incomplete data scenarios.
Findings
GeoMAE achieves up to 13.20% relative improvement over benchmarks.
The model effectively handles diverse missing data patterns.
Empirical results validate its robustness and superior performance.
Abstract
The ubiquity of missing data in urban intelligence systems, attributable to adverse environmental conditions and equipment failures, poses a significant challenge to the efficacy of downstream applications, notably in the realms of traffic forecasting and energy consumption prediction. Therefore, it is imperative to develop a robust spatio-temporal learning methodology capable of extracting meaningful insights from incomplete datasets. Despite the existence of methodologies for spatio-temporal graph forecasting in the presence of missing values, unresolved issues persist. Primarily, the majority of extant research is predicated on time-series analysis, thereby neglecting the dynamic spatial correlations inherent in sensor networks. Additionally, the complexity of missing data patterns compounds the intricacy of the problem. Furthermore, the variability in maintenance conditions…
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Taxonomy
TopicsData Management and Algorithms · Geographic Information Systems Studies · Data Mining Algorithms and Applications
