The course is structured into three modules: the first one will cover advanced topics in complex network theory, whereas, the second one will focus on economic and financial networks, dealing with both theory and applications.

Module 1: Advanced Theory of Complex Networks
Lecture 1 Models of Evolving Networks
Lecture 2 Fitness & Relevance models
Lecture 3 The Master Equations approach
Lecture 4 Percolation
Lecture 5 Epidemic Models on Networks
Lecture 6 Advanced Topological Properties
Lecture 7 Complex Networks Randomization
Lecture 8 Exponential Random Graphs
Lecture 9 Parameter Estimation via Maximum Likelihood
Lecture 10 Applications: Bipartite, Directed and Weighted Networks.

Module 2: Economic & Financial Networks
Lecture 1 Evolutionary Network Games
Lecture 2 Heterogeneous Mean-Field Theory
Lecture 3 Financial Networks
Lecture 4 Systemic Risk
Lecture 5 DebtRank
Lecture 6 Economic Networks
Lecture 7 The WTW & COMTRADE dataset
Lecture 8 Gravity Models of Trade
Lecture 9 Early Warning Signals
Lecture 10 Network Reconstruction from Partial Information

Module 3 Social and Infrastructural Networks
Lecture 1 Introduction to Social Network Data
Lecture 2 Tecniques and Methodologies of Analysis in Social Networks
Lecture 3 Twitter data and Models
Lecture 4 Clustering and Classification of Facebook Data
Lecture 5 Automatic Topic Extraction
Lecture 6 Introduction to Infrastructural Networks
Lecture 7 Electric Grids
Lecture 8 Cascade Phenomena
Lecture 9 Modelling of infrastructural networks
Lecture 10 Smart Grids and Renewables

Prerequisites: Linear algebra, Introduction to Networks, Found. Prob. & Stat. Inf.