Chevron Left
返回到 Social and Economic Networks: Models and Analysis

学生对 Stanford University 提供的 Social and Economic Networks: Models and Analysis 的评价和反馈

4.8
757 个评分

课程概述

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...

热门审阅

MR

Nov 1, 2017

Really enjoyed this course. The professor is really good and covers quite a lot of ground during the lectures. Good way to get into complex networks! Probably gonna do some studying on my own now :)

SB

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.

筛选依据:

51 - Social and Economic Networks: Models and Analysis 的 75 个评论(共 177 个)

创建者 Vikram D K

Apr 23, 2017

Lucidly taught by Prof. Jackson. I learned a whole deal of stuff that helps me make sense of some of the literature in economics that uses ideas from network analysis. My background is in economics (Master's degree).

创建者 Pablo M

Sep 26, 2020

Es un curso excelente que permite avanzar y lograr una mejor comprensión en la teoría de redes y las aplicaciones a economía. Si bien tener fundamentos sobre redes puede ser de utilidad, el curso es autocontenido.

创建者 David L

Nov 3, 2017

Really interesting. there is a lot of material and a lot of formula to be covered and Prof. Jackson does a great job teaching it.

Also, his book is really intesresting and goest deeper than the videoes

创建者 Josef T

Oct 23, 2020

Excellent and exciting opportunity get insight into into the interface between the university concept of knowledge of network theory and the scientific approach to this issue. Thanks a lot. Josef Toman

创建者 Aruna J

Sep 7, 2020

Dr. Jackson is clear and concise in his explanations and did a great job creating a high-level overview course on a subject for which he obviously has a much greater wealth of knowledge.

创建者 YYY Z

Jan 12, 2025

Thanks Professor Jackson for your generosity of sharing this course on Coursera. It's an excellent start for students interested in research on social networks analysis.

创建者 Neo P

Nov 25, 2021

Really good course. This professor knows what he's talking about and is a person to aspire to become. I wish the mathematical notation was more standard and consistant.

创建者 Moritz P

May 17, 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.

创建者 Avi C

Sep 4, 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.

创建者 Milton N d S J

Nov 7, 2022

The book "Social and Economic Networks" by Matthew O. Jackson is amazing and the lectures are very nice for whom wants to acquire the skills on her/his own.

创建者 Yang J

Aug 25, 2022

very helpful in understanding how idealized network models explain the observations in the real world; also got insights on the methodology in social science

创建者 Margarita R C G

Oct 18, 2018

Great course! Teacher gave very good explanations. Examples are very useful. I would love to take a more advanced course of social and economic networks.

创建者 Omar J

Jul 7, 2018

An excellent walkthrough of the literature. I just wish there were more empirical exercises and and more hands-on work with the data and algorithms.

创建者 José M M F

Jun 27, 2021

Professor Jackson is amazing, the literature cited is extremely recent and lets you know that Professor Jackson is one of its main contributors.

创建者 Erikson A

May 14, 2017

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

创建者 Carlos A N T

Feb 2, 2020

Professor Jackson is very clear and insightful! Loved his style of teaching. I hope more Economics professors were such good teachers as him.

创建者 Aldrich W

Dec 6, 2020

Prof. Jackson is so good at explaining these concepts in the lectures. I have honestly learned a lot regarding this topic and academic area.

创建者 Áron H

Jun 8, 2020

The course is extremely interesting and well presented. It is a great introduction to network science with various examples of applications.

创建者 valeriu p

Jun 21, 2017

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

创建者 Alejandro M M

May 30, 2017

Matt is the simple the best! We've covered a lot of different models and examples. Probably the best networks course that you can take.

创建者 Marco R

Feb 22, 2020

Useful, well taught, well organized. I suppose the coronavirus epidemic gives an opportunity for a real world example next year

创建者 李楠楠

Feb 13, 2017

Easier to understand network structure, utilities, equilibrium after illustration. Interesting and attracting course to take.

创建者 Amir H Y

Oct 30, 2016

The course is exceptional, I just wish the instructor would also include chapters that could help researchers in the field.

创建者 Ali K

Feb 5, 2020

It was really useful. The instructor was clear and the videos and slides are good. I enjoyed empirical exercise a lot.