Principle of Relevant Information for Graph Sparsification

Abstract

Graph sparsification aims to reduce the number of edges of a graph while maintaining its structural properties. In this paper, we propose the first general and effective information-theoretic formulation of graph sparsification, by taking inspiration from the Principle of Relevant Information (PRI). To this end, we extend the PRI from a standard scalar random variable setting to structured data (i.e., graphs). Our Graph-PRI objective is achieved by operating on the graph Laplacian, made possible by expressing the graph Laplacian of a subgraph in terms of a sparse edge selection vector w. We provide both theoretical and empirical justifications on the validity of our Graph-PRI approach. We also analyze its analytical solutions in a few special cases. We finally present three representative real-world applications, namely graph sparsification, graph regularized multi-task learning, and medical imaging-derived brain network classification, to demonstrate the effectiveness, the versatility and the enhanced interpretability of our approach over prevalent sparsification techniques. Code of Graph-PRI is available at https://github.com/SJYuCNEL/PRI-Graphs.

Cite

Text

Yu et al. "Principle of Relevant Information for Graph Sparsification." Uncertainty in Artificial Intelligence, 2022.

Markdown

[Yu et al. "Principle of Relevant Information for Graph Sparsification." Uncertainty in Artificial Intelligence, 2022.](https://mlanthology.org/uai/2022/yu2022uai-principle/)

BibTeX

@inproceedings{yu2022uai-principle,
  title     = {{Principle of Relevant Information for Graph Sparsification}},
  author    = {Yu, Shujian and Alesiani, Francesco and Yin, Wenzhe and Jenssen, Robert and Principe, Jose C.},
  booktitle = {Uncertainty in Artificial Intelligence},
  year      = {2022},
  pages     = {2331-2341},
  volume    = {180},
  url       = {https://mlanthology.org/uai/2022/yu2022uai-principle/}
}