ALINC aggregates node-level active learning utilities to graph-level selection criteria and benchmarks ten strategies across three aggregation methods on four datasets, identifying CoreSet, TypiClust, and BADGE as top performers.
arXiv preprint arXiv:1910.07567 , year=
3 Pith papers cite this work. Polarity classification is still indexing.
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CANE estimates cluster-specific reliability of noisy LLM pseudo-labels on graphs without ground truth to improve label-free node classification.
Active learning with randomly initialized models achieves comparable results to traditional candidate-model methods, with low-confidence sampling proving most effective.
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Are Candidate Models Really Needed for Active Learning?
Active learning with randomly initialized models achieves comparable results to traditional candidate-model methods, with low-confidence sampling proving most effective.