February 2025
Intermediate to advanced
392 pages
12h 9m
English
Graph embeddings are essential tools in graph-based machine learning. They transform the intricate structure of graphs—be it the entire graph, individual nodes, or edges—into a more manageable, lower-dimensional space. We do this to compress a complex dataset into a form that’s easier to work with, without losing its inherent patterns and relationships, the information to which we’ll apply a graph neural network (GNN) or other machine learning method.
Graphs, as we’ve learned, encapsulate relationships ...
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