SOTAVerified

A Persistent Weisfeiler–Lehman Procedure for Graph Classification

2019-06-09Proceedings of the 36th International Conference on Machine Learning 2019Code Available0· sign in to hype

Bastian Rieck, Christian Bock, Karsten Borgwardt

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

The Weisfeiler–Lehman graph kernel exhibits competitive performance in many graph classification tasks. However, its subtree features are not able to capture connected components and cycles, topological features known for characterising graphs. To extract such features, we leverage propagated node label information and transform unweighted graphs into metric ones. This permits us to augment the subtree features with topological information obtained using persistent homology, a concept from topological data analysis. Our method, which we formalise as a generalisation of Weisfeiler–Lehman subtree features, exhibits favourable classification accuracy and its improvements in predictive performance are mainly driven by including cycle information.

Tasks

Reproductions