LGMLOct 20, 2024

Conditional Prediction ROC Bands for Graph Classification

arXiv:2410.15239v15 citationsh-index: 3
Originality Highly original
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This addresses uncertainty challenges for ROC curves in medical imaging and drug discovery applications where test graph distributions differ from training data.

The paper tackles uncertainty quantification for ROC curves in graph classification under non-iid test data by introducing Conditional Prediction ROC (CP-ROC) bands, which provide statistically guaranteed coverage and significantly improve prediction reliability across diverse tasks.

Graph classification in medical imaging and drug discovery requires accuracy and robust uncertainty quantification. To address this need, we introduce Conditional Prediction ROC (CP-ROC) bands, offering uncertainty quantification for ROC curves and robustness to distributional shifts in test data. Although developed for Tensorized Graph Neural Networks (TGNNs), CP-ROC is adaptable to general Graph Neural Networks (GNNs) and other machine learning models. We establish statistically guaranteed coverage for CP-ROC under a local exchangeability condition. This addresses uncertainty challenges for ROC curves under non-iid setting, ensuring reliability when test graph distributions differ from training data. Empirically, to establish local exchangeability for TGNNs, we introduce a data-driven approach to construct local calibration sets for graphs. Comprehensive evaluations show that CP-ROC significantly improves prediction reliability across diverse tasks. This method enhances uncertainty quantification efficiency and reliability for ROC curves, proving valuable for real-world applications with non-iid objects.

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