Michael Bronstein | Neural diffusion PDEs, differential geometry, and graph neural networks
2/2/2022 CMSA New Technologies in Mathematics Seminar
Speaker: Michael Bronstein, University of Oxford and Twitter
Title: Neural diffusion PDEs, differential geometry, and graph neural networks
Abstract: In this talk, I will make connections between Graph Neural Networks (GNNs) and non-Euclidean diffusion equations. I will show that drawing on methods from the domain of differential geometry, it is possible to provide a principled view on such GNN architectural choices as positional encoding and graph rewiring as well as explain and remedy the phenomena of oversquashing and bottlenecks.
8 views
28
9
4 months ago 00:06:47 1
The Secret To Writing Lyrics
1 year ago 00:09:44 1
How to speak whale – with Tom Mustill and Michael Bronstein
1 year ago 00:03:41 1
AJR - Inertia (Official Video)
2 years ago 00:38:27 1
ICLR 2021 Keynote - “Geometric Deep Learning: The Erlangen Programme of ML“ - M Bronstein
2 years ago 01:19:40 6
AMMI 2022 Course “Geometric Deep Learning“ - Lecture 2 (Learning in High Dimensions) - Joan Bruna