Reproducing results from the paper "GraphRNN: Generating Realistic Graphs with Deep Auto-regressive Model".
The following Python libraries are required:
pytorch >= 1.10
tensorboard >= 2.8
networkx >= 2.6.3
pyyaml >= 6.0
pyemd >= 0.5.1
- We added additional evaluation metrics:
- Betweenness Centrality
- Degree Centrality
- Density
- Triadic Closure
- We added support for generating directed graphs and a special mode for generating DAGs
The authors' original implementation can be found here.