February 2025
Intermediate to advanced
392 pages
12h 9m
English
In the first two chapters of this book, we explored fundamental concepts related to graphs and graph representation learning. All of this served to set us up for part 2, where we’ll explore distinct types of graph neural network (GNN) architectures, including convolutional GNNs, graph attention networks (GATs), and graph autoencoders (GAEs).
In this chapter, our goal is to understand and ...