Corporate network


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Utrecht University Summer School on Network Science (2023): Javier Garcia-Bernardo, Leto Peel, Mahdi Shafiee Kamalabad, Elena Candellone, Vincent Buskens.

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Network Science

2023 Utrecht University Summer School

Practical information

Github repository

All slides, code and data can be found here. The lectures and code can also be explored using the links below.

Program

Topic Lecturer Materials
1a. Introduction to Network Science Javier Slides, Practical Python (Solution), Practical R
1b. Network Representation and Centrality Javier Slides, Practical (Solution)
2a. Statistical Approaches to Network Analysis: REM, ERGM, SOAM Mahdi Slides, Practical (zip) (Solution)
2b. Link prediction: Traditional approaches and node embeddings Javier (& Leto) Slides (part 1, part 2) Practical
3a. Network Reconstruction using Probabilistic Graphical Models: Markov Random Fields (Graphical LASSO) Mahdi Slides, Practical (zip) (Python example)
3b. Network Reconstruction using Probabilistic Graphical Models: Bayesian Networks Mahdi Slides, Practical (zip)
4a. Network Models and Hypothesis Testing Leto Slides, Calculation Example, Practical (Solution)
4b. Community structure: The Stochastic Block Model Leto Slides, Practical (Solution)
5. Simple and Complex Contagion in Networks Vincent Slides (morning, afternoon), Practical+data(ZIP) (Solution)

The materials of previous editions are here: 2022

Description

How can networks help us understand and predict social systems? How to find important individuals and communities? How to predict unobserved connections between genes? How to learn the dependencies between interrelated entities? How can we stop disease spreading in networks? In this course, we provide participants with the conceptual and practical skills necessary to use network science tools to answer social, economic and biological questions.

This course introduces concepts and tools in network science. The objective of the course is that participants acquire hands-on knowledge on how to analyze different types of networks. Participants will be able to understand when a network approach is useful, understand different types of networks, understand the differences and similarities between a Complex Networks and a Social Network Analysis approach, describe network characteristics, infer edges or node attributes, and explore dynamical processes in networks.

The course has a hands-on focus, with lectures accompanied by programming practicals (in Python and R) to apply the knowledge on real networks, drawn from examples in sociology, economics and biology.