No Change, No Gain: Empowering Graph Neural Networks with Expected Model Change Maximization for Active Learning
–Neural Information Processing Systems
Graph Neural Networks (GNNs) are crucial for machine learning applications with graph-structured data, but their success depends on sufficient labeled data. We present a novel active learning (AL) method for GNNs, extending the Expected Model Change Maximization (EMCM) principle to improve prediction performance on unlabeled data. By presenting a Bayesian interpretation for the node embeddings generated by GNNs under the semi-supervised setting, we efficiently compute the closed-form EMCM acquisition function as the selection criterion for AL without re-training.
Neural Information Processing Systems
Feb-15-2026, 23:22:55 GMT
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