A07 Signal processing on graphs and complexes
The goal of this project is to advance our understanding of graph neural networks and related signal processing methods for data defined on non-Euclidean domains. We will explore two selected facets within this broad area: a) how the structure of the domain on which the neural network is defined constrains its expressibility, and b) how the structure of the neural network influences its training via gradient descent and related algorithms. In both cases we concentrate on the roles of symmetries and (approximate) low rank structures within those networks, i.e., low-dimensional (sparse) substructures within these networks.
Project Leader
- Prof. Dr. Michael Schaub
- RWTH Aachen University
- more information
- +49 241 80 21490
- schaub@cs.rwth-aachen.de
- homepage
Postdoctoral Researcher
- Dr. Dhiraj Patel
- RWTH Aachen University
- more information
- patel@cs.rwth-aachen.de
- Dr. Anton Savostianov
- RWTH Aachen University
- more information
- savostianov@cs.rwth-aachen.de
Publications
Graph Neural Networks Do Not Always Oversmooth
Preprint 2024