Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Structural Alignment Improves Graph Test-Time Adaptation

About

Graph-based learning excels at capturing interaction patterns in diverse domains like recommendation, fraud detection, and particle physics. However, its performance often degrades under distribution shifts, especially those altering network connectivity. Current methods to address these shifts typically require retraining with the source dataset, which is often infeasible due to computational or privacy limitations. We introduce Test-Time Structural Alignment (TSA), a novel algorithm for Graph Test-Time Adaptation (GTTA) that adapts a pretrained model to align graph structures during inference without the cost of retraining. Grounded in a theoretical understanding of graph data distribution shifts, TSA employs three synergistic strategies: uncertainty-aware neighborhood weighting to accommodate neighbor label distribution shifts, adaptive balancing of self-node and aggregated neighborhood representations based on their signal-to-noise ratio, and decision boundary refinement to correct residual label and feature shifts. Extensive experiments on synthetic and real-world datasets demonstrate TSA's consistent outperformance of both non-graph TTA methods and state-of-the-art GTTA baselines.

Hans Hao-Hsun Hsu, Shikun Liu, Han Zhao, Pan Li• 2025

Related benchmarks

TaskDatasetResultRank
Node ClassificationDBLP
Accuracy37.06
78
Node ClassificationDBLP & ACM A to D
Accuracy74.64
50
Node ClassificationArxiv Source: 1950-2007, Target: 2014-2016
Accuracy50.95
44
Node ClassificationArxiv Source: 1950-2011, Target: 2014-2016
Accuracy59.26
44
Node ClassificationArxiv Source: 1950-2009, Target: 2014-2016
Accuracy54.49
33
Node ClassificationArxiv Source: 1950-2007, Target: 2016-2018
Accuracy53.04
32
Node ClassificationArxiv Source: 1950-2009, Target: 2016-2018
Accuracy0.5518
32
Node ClassificationArxiv Source: 1950-2011, Target: 2016-2018
Accuracy58.27
32
Node ClassificationMAG US -> CN (test)
Accuracy41.61
19
Node ClassificationMAG US -> DE (test)
Accuracy0.4613
19
Showing 10 of 50 rows

Other info

Follow for update