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學生對 伊利诺伊大学香槟分校 提供的 数据可视化 的評價和反饋

4.5
960 個評分
224 條評論

課程概述

Learn the general concepts of data mining along with basic methodologies and applications. Then dive into one subfield in data mining: pattern discovery. Learn in-depth concepts, methods, and applications of pattern discovery in data mining. We will also introduce methods for pattern-based classification and some interesting applications of pattern discovery. This course provides you the opportunity to learn skills and content to practice and engage in scalable pattern discovery methods on massive transactional data, discuss pattern evaluation measures, and study methods for mining diverse kinds of patterns, sequential patterns, and sub-graph patterns....

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MK

Apr 06, 2018

Good course, very well structured and with interesting assignments. Some (especially first) lessons are more of a general culture but most are very helpful and allow to learn a lot of things.

JM

Jun 04, 2016

I found the class to be very informative. The assignments on creating charts and graphs for large data sets were practical and helped me understand the concepts taught in the course.

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151 - 数据可视化 的 175 個評論(共 219 個)

創建者 Muhammad A I

Mar 22, 2018

The theory and the content was amazing and well thought. I just wish some walkthroughs were provided for easily getting started with visualization software... I as a non-developer found it extremely difficult to hack my way around new tools and software within the tight deadlines (and I wasn't alone!)

創建者 Marie C

Feb 02, 2020

When saying that we do not need to be able to program, I feel we should get additionnal ressources, especially for assignment two.. as it was very hard to parse the data provided due to the large number. Maybe it would then be beneficial to provide smaller set of data for the network graph.

創建者 Diana C G R

Jul 23, 2016

I like the course because it helps you make visualizations of different types of data by using very simple tools based on rich algorithms. I understand the fundamental concepts to discover patterns and relevant information from the data, applying some design rules in the software.

創建者 胡立如

May 20, 2018

give us big picture of visualizations and share lots of practical skills. also cover some mechanisms of why visualization through introducing human visual perception system. However, the tool in this course is mainly the tableu which is a business software that is not free.

創建者 Vik V

Jul 18, 2019

Good high level course that covers many of the basics. Not a lot of practical (though the course does state that up front). 4 out of 5 only because it felt like the last lecture felt like it was trying to shoehorn in a ton of new concepts without really fleshing them out.

創建者 Alexander S

Sep 13, 2019

You get broad overview about Data Visualization.

Therefor the depth of the course isn't to high.

Please provide additional information upfront, which tools are recommended to pass this course.

Some peer reviewers do not grade according to the guidelines.

創建者 Dmitry S

Dec 10, 2016

Interesting course, but too much theoretical data without providing sufficient practical tasks to remember it better.

In other courses they used to have mini quizzes embedded into videos. They are usually very helpful, but here we got none of them.

創建者 Sean M

May 14, 2018

I liked the 'harder' science aspect of the course and how it went beyond basic design considerations. Maybe a little challenging for novices with visualization, but good deep dive for people who want more theory and visualization science.

創建者 Devender B

Jan 28, 2019

Human visual perception and cognition, design and color usage are the new things which I learnt are very useful for applying the skills in real life. I wish there is one module for training on an open source visualization tool

創建者 Kurt R

Nov 05, 2016

This course was excellent. It provided not only an overview of what data visualisation is but it also proved to be sufficiently challenging regarding the assignments and quizzes. This was truly a university course.

創建者 Gary D

Jun 02, 2017

A fairly interesting course with a good instructor. The course gave me a chance to play with my visualization tools in order to expand my usage rather than being in a rush to complete my tasks.

創建者 Vaidhyanathan C

Apr 27, 2020

I enjoyed a great deal of this course. However, I felt that the course could be improved by adding in a few programming implementations of visualization. Thank you for teaching this subject!

創建者 Mohammad H

Apr 12, 2020

An explanation of the reasoning behind the quiz answers would have been helpful. Ideally, similar to what you might see in a multiple choice standardized test prep guide.

創建者 Kofi A

May 29, 2017

This very interesting course have sharpened my ability to read and interpret graphs in general and more importantly to pay more attention to every little details.

創建者 Peter T

Aug 04, 2017

Good course. The section on graphs could use more detail on how the layout algorithms affect usability of data visualizations.

創建者 Shravan

Jun 28, 2017

It should have more assignment and handson, It should also teach how to use any visualization tool for doing assignment.

創建者 Isaac S R

May 25, 2019

Helpful course. It provides some useful visualization strategies and a few techniques in an understandable format.

創建者 Gary C

Jun 08, 2017

A solid review of core concepts in data visualization. Good inspiration for further, more in-depth learning.

創建者 Gerardo C C

Mar 11, 2018

A lecture video is missing, it seems like months since it's been like this. Please FIx It!

創建者 S S

Feb 28, 2020

The content regarding network analysis could be more detailed

創建者 Mohit S

Apr 19, 2020

Would have liked a technical approach to learning as well

創建者 Duke

Feb 29, 2020

A good guide, but still lacks course fun and practices.

創建者 Scott C

Jul 06, 2018

Very easy to understand presentation on visualization.

創建者 Shuo J

Mar 23, 2019

some assignments are boring. but in general, its good

創建者 ALDELIR F R

Mar 19, 2018

It is a great course for introduction on the subject.