Overview
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore a comprehensive video lecture examining the evolution and future trajectory of Graph Neural Networks (GNN) beyond traditional message passing approaches. Delve into the fundamental concepts of GNNs as dyadic systems and their operation on underlying topological spaces. Learn about key challenges in the field, including symmetry problems and graph embedding limitations. Drawing from multiple academic publications and research papers, gain insights into physics-inspired paradigms and effective design solutions for current GNN limitations. Access additional learning resources through a curated playlist of 25 code-focused videos covering general GNN concepts, complementing the theoretical foundations presented in this advanced technical discussion.
Syllabus
Intro
Overview
Graph Neural Networks
Graph Embedding
Symmetry
Problems
Problem number 1
Problem number 2
Problem number 4
Taught by
Discover AI