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Learning on graph-structured data
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Graph Mining Hamilton
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- 1 Intro
- 2 Learning on graph-structured data
- 3 Node classification in the real world
- 4 Link prediction in the real world
- 5 Graph classification in the real world
- 6 The rise of deep learning on graphs
- 7 Outline for today
- 8 What is graph representation learning Goal: Learning useful node and graph representations without hand-crafted features.
- 9 Key challenges of graph data . Two key challenges with graph-structured data
- 10 Limitations of traditional node embeddings
- 11 Node embeddings to graph neural networks
- 12 What about graph classification?
- 13 The impact of GNNs: drug repurposing
- 14 The impact of GNNs: recommender systems
- 15 GNNs and graph convolutions
- 16 Graph Fourier analysis
- 17 What does this have to do with GNNS
- 18 Weisfeiler-Lehman algorithm
- 19 Practical GNNs beyond the WL hierarchy
- 20 Breaking the bottleneck of message passing
- 21 Three challenges or one?