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学生对 University of Michigan 提供的 Applied Social Network Analysis in Python 的评价和反馈

4.6
2,718 个评分

课程概述

This course will introduce the learner to network analysis through tutorials using the NetworkX library. The course begins with an understanding of what network analysis is and motivations for why we might model phenomena as networks. The second week introduces the concept of connectivity and network robustness. The third week will explore ways of measuring the importance or centrality of a node in a network. The final week will explore the evolution of networks over time and cover models of network generation and the link prediction problem. This course should be taken after: Introduction to Data Science in Python, Applied Plotting, Charting & Data Representation in Python, and Applied Machine Learning in Python....

热门审阅

JA

Nov 22, 2020

Great introductory course on graph theory using Networkx. The instructor goes through each algorithm with step-by-step examples, and gives relevant examples at the end of each topic.

VS

Jul 15, 2018

Lectures are very well-designed. Especially, the assignment of week 4 is too good, that give me an overview of how we can apply machine learning in network analysis.

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376 - Applied Social Network Analysis in Python 的 400 个评论(共 456 个)

创建者 Vishal S

Jul 16, 2018

Lectures are very well-designed. Especially, the assignment of week 4 is too good, that give me an overview of how we can apply machine learning in network analysis.

创建者 Steffen H

Nov 20, 2018

Course was ok, the assignments are not too difficult. I wish the course would provided more insights and discussions of the presented metrics of centrality though.

创建者 Edvard M

Aug 1, 2022

Would have appreciated more theoretic approach even for applied science course, but did like the content & much appreciate staff on being so helpful in forums

创建者 Sean D

Jun 26, 2019

Overall, good course. It could use more explicit examples of NetworkX in the actual Jupyter Notebook itself, but the coverage of the material is high quality.

创建者 Ezequiel P

Sep 16, 2020

Great course! The topic is very interesting! I would have liked it to have more hands-on approach during the lectures, but the course quality is great

创建者 YUJI H

Jun 28, 2018

The presentation documents are very helpful to understand the lectures. If they can be downloaded to our local laptop, I evaluate this course 5 stars.

创建者 Alejandro B

Jan 10, 2020

Great course, however, there is quite complicated the autograder system. Sometimes it takes too much time trying to figure out technical issues.

创建者 Martin U

Jan 27, 2019

This was a great course, lots of great insights to gain. Only thing that was frustrating was the multiple choice quiz questions. I hated those.

创建者 Tom M

Nov 4, 2017

A bit confusing material since it is new to me. Lots of material in a short course. The auto grader is a bit difficult to work with.

创建者 Grace B

Apr 16, 2020

The course provides a good overview of basic measures for network data. I took as prep for a harder course. I would recommend it.

创建者 Dmitry B

Sep 13, 2017

This course was easier that the previous 4 in the specialization as it used them as a foundation for practical graph analysis.

创建者 Victor G

Oct 31, 2018

Intreesting and rich in learning. The last assignment was specially fun. Would be nice with more such free assignments.

创建者 Daniel D A

Mar 28, 2020

I liked the lectures but the assignments were significantly harder and had content that we didn't learn in the lecture

创建者 Lucas G

Sep 21, 2017

Nice overview of general graph theory, and some useful exercises on how it can be applied for social network analysis.

创建者 Yu C

Nov 2, 2021

This instructor in a lot better than the one in the text mining course, and the course content is better prepared.

创建者 Mike W

Nov 20, 2019

If you've had prior expose to graphs (e.g., an intermediate-level CS course), the first 2.5 weeks is pretty easy.

创建者 Shashi T

Nov 17, 2018

This was wonderful course in terms of content and content delivery. Prof was really nice. His pace was very good.

创建者 Bart C

Dec 10, 2018

Great course! Love the instructor. Good background in networks, while sticking to the applied side of things.

创建者 Vijay B

Apr 14, 2023

well structured and provides the foundations for network analysis - connecting it with real-world use cases.

创建者 Vicente P

Aug 14, 2019

Good course with a nice and clean talk professor. Perhaps I miss some real-world cases in the assignments.

创建者 Gregory C

Apr 4, 2020

Pretty well designed course, except that I found myself battling the auto-grader too often.

创建者 Mohit M K

Oct 22, 2018

One of the more tougher courses in Social Networks but still would recommend to everyone!

创建者 Anand K

Nov 15, 2018

Good Content! And the assignments were just right to augment effective learning.

创建者 Juan M

Jun 10, 2019

The machine learning connection could have been mentioned earlier in the course

创建者 Minshen C

Dec 25, 2019

it would be great if some case study of prediction can be added to the course