SMGRL: Scalable Multi-resolution Graph Representation Learning
Abstract
Graph convolutional networks (GCNs) allow us to learn topologically-aware node embeddings, which can be useful for classification or link prediction. However, they are unable to capture long-range dependencies between nodes without adding additional layers -- which in turn leads to over-smoothing and increased time and space complexity. Further, the complex dependencies between nodes make mini-batching challenging, limiting their applicability to large graphs. We propose a Scalable Multi-resolution Graph Representation Learning (SMGRL) framework that enables us to learn multi-resolution node embeddings efficiently. Our framework is model-agnostic and can be applied to any existing GCN model. We dramatically reduce training costs by training only on a reduced-dimension coarsening of the original graph, then exploit self-similarity to apply the resulting algorithm at multiple resolutions. The resulting multi-resolution embeddings can be aggregated to yield high-quality node embeddings that capture both long- and short-range dependencies. Our experiments show that this leads to improved classification accuracy, without incurring high computational costs.
Cite
@article{arxiv.2201.12670,
title = {SMGRL: Scalable Multi-resolution Graph Representation Learning},
author = {Reza Namazi and Elahe Ghalebi and Sinead Williamson and Hamidreza Mahyar},
journal= {arXiv preprint arXiv:2201.12670},
year = {2023}
}
Comments
22 pages