Bounds on Perfect Node Classification: A Convex Graph Clustering Perspective
Bounds on Perfect Node Classification: A Convex Graph Clustering Perspective
We present an analysis of the transductive node classification problem, where the underlying graph consists of communities that agree with the node labels and node features. For node classification, we propose a novel optimization problem that incorporates the node-specific information (labels and features) in a spectral graph clustering framework. Studying this problem, we demonstrate a synergy between the graph structure and node-specific information. In particular, we show that suitable node-specific information guarantees the solution of our optimization problem perfectly recovering the communities, under milder conditions than the bounds on graph clustering alone. We present algorithmic solutions to our optimization problem and numerical experiments that confirm such a synergy.
Firooz Shahriari-Mehr、Javad Aliakbari、Alexandre Graell i Amat、Ashkan Panahi
计算技术、计算机技术
Firooz Shahriari-Mehr,Javad Aliakbari,Alexandre Graell i Amat,Ashkan Panahi.Bounds on Perfect Node Classification: A Convex Graph Clustering Perspective[EB/OL].(2025-08-27)[2025-09-06].https://arxiv.org/abs/2508.20231.点此复制
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