English

Graph Convolution for Semi-Supervised Classification: Improved Linear Separability and Out-of-Distribution Generalization

Machine Learning 2022-02-07 v4 Machine Learning

Abstract

Recently there has been increased interest in semi-supervised classification in the presence of graphical information. A new class of learning models has emerged that relies, at its most basic level, on classifying the data after first applying a graph convolution. To understand the merits of this approach, we study the classification of a mixture of Gaussians, where the data corresponds to the node attributes of a stochastic block model. We show that graph convolution extends the regime in which the data is linearly separable by a factor of roughly 1/D1/\sqrt{D}, where DD is the expected degree of a node, as compared to the mixture model data on its own. Furthermore, we find that the linear classifier obtained by minimizing the cross-entropy loss after the graph convolution generalizes to out-of-distribution data where the unseen data can have different intra- and inter-class edge probabilities from the training data.

Keywords

Cite

@article{arxiv.2102.06966,
  title  = {Graph Convolution for Semi-Supervised Classification: Improved Linear Separability and Out-of-Distribution Generalization},
  author = {Aseem Baranwal and Kimon Fountoulakis and Aukosh Jagannath},
  journal= {arXiv preprint arXiv:2102.06966},
  year   = {2022}
}

Comments

30 pages, 9 figures, 2 tables

R2 v1 2026-06-23T23:07:58.153Z