Geometric Deep Learning: GNNs Beyond Permutation Equivariance
Casting graph neural networks (GNNs) within the Geometric Deep Learning blueprint, then demonstrating how we can use the blueprint to extend GNNs beyond the notion of permutation equivariance.
Guest Lecture at the Machine Learning with Graphs (CS224W) course, Stanford University, 30 November 2021
Slide deck:
5 views
10
1
2 years ago 00:58:16 21
Geometric Deep Learning for Drug Discovery
5 years ago 00:50:04 17
Tutorial 9 - Geometric deep learning | Deep Learning on Computational Accelerators
4 years ago 04:11:49 17
iGDL 2020: Israeli Geometric Deep Learning Workshop
5 years ago 01:08:12 26
Geometric deep learning for functional protein design
7 years ago 00:03:31 9
Deep image reconstruction: Geometric shapes
3 years ago 05:48:52 9
iGDL 2021 Israeli Geometric Deep Learning Workshop
5 years ago 01:02:45 10
Geometric deep learning for functional protein design - Michael Bronstein
3 years ago 01:25:12 11
Geometric Deep Learning: GNNs Beyond Permutation Equivariance
3 years ago 07:36:57 16
The Third Workshop on Deep Learning for Geometric Computing
3 years ago 01:00:09 8
Geometric deep learning, from Euclid to drug design
6 years ago 00:31:37 50
Michael Bronstein - Geometric deep learning on graphs: going beyond Euclidean data
3 years ago 03:33:23 15
#60 Geometric Deep Learning Blueprint (Special Edition)
5 years ago 01:34:50 20
SGP 2020 Graduate School: Deep Learning for Geometric Data
4 years ago 00:38:27 33
ICLR 2021 Keynote - “Geometric Deep Learning: The Erlangen Programme of ML“ - M Bronstein
3 years ago 01:22:43 42
AMMI Course “Geometric Deep Learning“ - Lecture 9 (Manifolds & Meshes) - Michael Bronstein