AI RESEARCH

Beyond the Academic Monoculture: A Unified Framework and Industrial Perspective for Attributed Graph Clustering

arXiv CS.LG

ArXi:2603.20829v1 Announce Type: new Attributed Graph Clustering (AGC) is a fundamental unsupervised task that partitions nodes into cohesive groups by jointly modeling structural topology and node attributes. While the advent of graph neural networks and self-supervised learning has catalyzed a proliferation of AGC methodologies, a widening chasm persists between academic benchmark performance and the stringent demands of real-world industrial deployment. To bridge this gap, this survey provides a comprehensive, industrially grounded review of AGC from three complementary perspectives.