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STA-GANN: A Valid and Generalizable Spatio-Temporal Kriging Approach

About

Spatio-temporal tasks often encounter incomplete data arising from missing or inaccessible sensors, making spatio-temporal kriging crucial for inferring the completely missing temporal information. However, current models struggle with ensuring the validity and generalizability of inferred spatio-temporal patterns, especially in capturing dynamic spatial dependencies and temporal shifts, and optimizing the generalizability of unknown sensors. To overcome these limitations, we propose Spatio-Temporal Aware Graph Adversarial Neural Network (STA-GANN), a novel GNN-based kriging framework that improves spatio-temporal pattern validity and generalization. STA-GANN integrates (i) Decoupled Phase Module that senses and adjusts for timestamp shifts. (ii) Dynamic Data-Driven Metadata Graph Modeling to update spatial relationships using temporal data and metadata; (iii) An adversarial transfer learning strategy to ensure generalizability. Extensive validation across nine datasets from four fields and theoretical evidence both demonstrate the superior performance of STA-GANN.

Yujie Li, Zezhi Shao, Chengqing Yu, Tangwen Qian, Zhao Zhang, Yifan Du, Shaoming He, Fei Wang, Yongjun Xu• 2025

Related benchmarks

TaskDatasetResultRank
Spatio-Temporal KrigingNREL (Random)
MAE1.23
10
Spatio-Temporal KrigingNREL (Mixed)
MAE1.3
10
Spatio-Temporal KrigingNREL (Block)
MAE1.59
10
Spatio-Temporal KrigingMETR-LA (Random)
MAE6.02
10
Spatio-Temporal KrigingPEMS-BAY (random)
MAE3.55
10
Spatio-Temporal KrigingPEMS-BAY (Block)
MAE3.72
10
Spatio-Temporal KrigingPEMS-BAY (Mixed)
MAE3.64
10
Spatio-Temporal KrigingMETR-LA (Block)
MAE6.14
10
Spatio-Temporal KrigingMETR-LA (Mixed)
MAE6.08
10
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