Back to Social and Economic Networks: Models and Analysis
Stanford University

Social and Economic Networks: Models and Analysis

Learn how to model social and economic networks and their impact on human behavior. How do networks form, why do they exhibit certain patterns, and how does their structure impact diffusion, learning, and other behaviors? We will bring together models and techniques from economics, sociology, math, physics, statistics and computer science to answer these questions. The course begins with some empirical background on social and economic networks, and an overview of concepts used to describe and measure networks. Next, we will cover a set of models of how networks form, including random network models as well as strategic formation models, and some hybrids. We will then discuss a series of models of how networks impact behavior, including contagion, diffusion, learning, and peer influences. You can find a more detailed syllabus here: http://web.stanford.edu/~jacksonm/Networks-Online-Syllabus.pdf You can find a short introductory videao here: http://web.stanford.edu/~jacksonm/Intro_Networks.mp4

Status: Sociology
Status: Bayesian Statistics
AdvancedCourse30 hours

Featured reviews

SN

4.0Reviewed Jun 5, 2020

Interesting survey of modern network theory, from Erdos-Renyi random graphs, to SIS ("flu") models, and games on networks. Rather academic at times, without the rigour.

MP

5.0Reviewed May 16, 2020

Matt is a fantastic instructor and has inspired many new ideas for my PhD project. Putting this course up here for free is extremely generous of both Matt and Coursera.

JK

4.0Reviewed Dec 9, 2018

Excellent course. The labs are the best. Pajek and Gephi will be handy for network graphing and analyzing data. Thank you Professor Matthew Jackson. Your work is very good for reference.

AC

5.0Reviewed Sep 3, 2016

The course is a helpful first step in the field of network science. Presenting clearly many complex ideas that are important for understanding current research.

TC

5.0Reviewed Apr 29, 2017

An overview of concepts and models of how networks form. There are applicable with basic concepts from probability theory, statistics, and some light calculus astonishingly well.

HS

4.0Reviewed Dec 21, 2016

The course is vast. The Professor is to the point and doesn't lack knowledge in his field.I'd recommend this course for anyone interested in Economics. Loved it.

MG

5.0Reviewed Apr 16, 2018

Great survey course for social network analysis. Dr. Jackson's lectures motivated me to buy the book, and I hope to come back to this course later to work more on the optional parts.

SB

5.0Reviewed Oct 10, 2020

Very important course. My suggestion to the Prof. if he can increase the course length and include more details that would be much better or he can come up with advance course on the same series.

EA

5.0Reviewed May 14, 2017

Fantastic course! Compelling examples of application and an enthusiasm for the concepts that is contagious. Would love more from Prof. Jackson!

SW

5.0Reviewed Aug 8, 2016

Very good course on Social Networks, and also a hard one even for graduate level. Generally assignments are not too tough but fully understanding all the concepts take lots of extra readings.

GP

5.0Reviewed Jun 24, 2016

A very usefull course very different from others. Although for coursera standars, its very extensive and not so basic, that´s why I think its great

VP

5.0Reviewed Jun 20, 2017

An excellent and very useful course. Recommend with no reserves to anyone willing to understand the world from a well structured perspective

All reviews

Showing: 20 of 177

Michael Garee
5.0
Reviewed Apr 16, 2018
Isard Dunietz
5.0
Reviewed May 15, 2019
Sanjoy Bhagat
5.0
Reviewed Oct 11, 2020
Nikita Sachanandani
5.0
Reviewed May 29, 2020
THANACHON CHEEPBORISUTTIKUL
5.0
Reviewed Apr 29, 2017
Manoel Ribeiro
5.0
Reviewed Nov 2, 2017
Siqi, WU
5.0
Reviewed Aug 8, 2016
Laurent Gauthier
5.0
Reviewed Mar 1, 2018
Thiago Ribeiro
5.0
Reviewed Jun 21, 2022
Alfredo Maranca
5.0
Reviewed Sep 17, 2022
Noah James Wescombe
5.0
Reviewed Nov 17, 2018
Tongtong Hao
5.0
Reviewed Dec 4, 2016
Lillian Donna Namujju
5.0
Reviewed Jul 3, 2021
antonio barletta
5.0
Reviewed Apr 22, 2021
Julia Larissa Becker
5.0
Reviewed Apr 18, 2020
Gabriel Preciado
5.0
Reviewed Jun 25, 2016
Jess Behrens
5.0
Reviewed Jul 13, 2017
Wilson Or
5.0
Reviewed Oct 8, 2023
Raphael Marques Franco
5.0
Reviewed Mar 3, 2022
Rebecca Allan
5.0
Reviewed Jan 13, 2022