Seminar: Graph Learning (PhD course)
In this seminar, we cover different neural-network architectures for representing graphs. The participants read and present selected papers, which will be discussed during the meetings.
The following topics will be covered:
- Graph Convolutional Networks (GCN)
- Graph Neural Networks (GNN)
- Message-Passing Neural Networks (MPNN)
- Graph Transformer Architectures
- Expressive Power of different Architectures
- Applications in Symbolic Reasoning
Course Information
- Examiner: Daniel Gnad