Lectures:
1. Network construction from vector data
2. Network clustering I, matrix algorithms
3. Network clustering II, graph partitioning (Kernighan-Lin)
4. Network sampling
5. Advanced network models I, generating of community structure
6. Advanced network models II, evolving networks
7. Community detection
8. Modularity and community structure
9. Correlation in networks
10. Network resilience and spread phenomena
11. Temporal networks
12. Multilayer networks I, properties and measures
13. Multilayer networks II, random walks and projections
14. Visualization of network data
Seminars are directly connected to the lectures, discussions and knowledge verification using experiments on data sets.
1. Network construction from vector data
2. Network clustering I, matrix algorithms
3. Network clustering II, graph partitioning (Kernighan-Lin)
4. Network sampling
5. Advanced network models I, generating of community structure
6. Advanced network models II, evolving networks
7. Community detection
8. Modularity and community structure
9. Correlation in networks
10. Network resilience and spread phenomena
11. Temporal networks
12. Multilayer networks I, properties and measures
13. Multilayer networks II, random walks and projections
14. Visualization of network data
Seminars are directly connected to the lectures, discussions and knowledge verification using experiments on data sets.