AI RESEARCH
ALINC: Active Learning for Inductive Node Classification via Graph Sampling
arXiv CS.LG
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ArXi:2606.04647v1 Announce Type: new Active learning (AL) for node classification typically focuses on selecting the most informative nodes for annotation within one or a few large graphs (e.g., in social network analysis). However, in other domains, such as molecular chemistry or electronic design automation, datasets consist of thousands of independent graphs. In many of these inductive settings, annotating an individual node requires a full-graph analysis, which effectively yields the remaining node labels on-the-fly.