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Discrete Math and Analyzing Social Graphs に戻る

HSE University による Discrete Math and Analyzing Social Graphs の受講者のレビューおよびフィードバック



The main goal of this online course is to introduce topics in Discrete Mathematics relevant to Data Analysis. We will start with a brief introduction to combinatorics, the branch of mathematics that studies how to count. Basics of this topic are critical for anyone working in Data Analysis or Computer Science. We will illustrate new knowledge, for example, by counting the number of features in data or by estimating the time required for a Python program to run. Next, we will apply our knowledge in combinatorics to study basic Probability Theory. Probability is everywhere in Data Analysis and we will study it in much more details later. Our goals for probability section in this course will be to give initial flavor of this field. Finally, we will study the combinatorial structure that is the most relevant for Data Analysis, namely graphs. Graphs can be found everywhere around us and we will provide you with numerous examples. We will mainly concentrate in this course on the graphs of social networks. We will provide you with relevant notions from the graph theory, illustrate them on the graphs of social networks and will study their basic properties. In the end of the course we will have a project related to social network graphs. As prerequisites we assume only basic math (e.g., we expect you to know what is a square or how to add fractions), basic programming in Python (functions, loops, recursion), common sense and curiosity. Our intended audience are all people that work or plan to work in Data Analysis, starting from motivated high school students. This Course is part of HSE University Master of Data Science degree program. Learn more about the admission into the program and how your Coursera work can be leveraged if accepted into the program here



The course is very understandable and assignments are very interesting and applicable. I love the way Russians teach mathematics, therefore I will continue watching courses from this University.


this is a great course i love it and i learned many things like counting , basic of probability graphs\n\nthe first four weeks are amazing the last two weeks was hard to me but possible to solve


Discrete Math and Analyzing Social Graphs: 51 - 75 / 127 レビュー

by Daniel H


Lessons are well-paced and instructors explain well

by Dr. R .


Very informative. Enjoyed doing assignments.

by Jonathan M


Very informative overview of Discrete Math.

by Pronay K P


Great course for data science learners!!!!

by Guzeev E


This Course is wonderfull.

by Adewinbi H S


I enjoyed the course.

by Sergio L


Very good course!!

by Ajit B


very good course!

by Manmohan K


Very good course

by SAI P S T


good session

by Saurabh J


Great Course

by Mohammad S


Great course

by Ajitesh D



by Elkin E G A


ultra good

by Gowri T J - P



by LIM M H


very nice

by Nhat P L Q


Very good

by Ahmed A


Thank you

by MR. J T R A



by s n



by John T S


I think the coverage of materials was very good. Sometimes there were holes in the presentation: a few grammar conventions (rather understandably) made for confusing moments. The quizzes sometimes presented things which were a bit less explained than they might have been... but then on the other hand they required a bit of independent looking-around, which was not bad. (One example was the 'number of isomorphisms' question, which was needlessly perplexing for someone just introduced to the formal definitions, and didn't know what sort of wrinkles might be added. Or maybe that was a good way of thinking downward from the presented idea, even if it was in itself very simple. I'm not sure.) Perhaps a few more visualizations would have been helpful, too... the ideas are abstract, but I (personally) find visualizations a good way in. Also, perhaps the python loops could have been more used. They are quite demonstrative -- the relation between tuples and permutations, in particular... but maybe there are some nice ways of doing that. Anyhow, I enjoyed the unsimple simplicity of it.

by Jack K


Mostly this was a very well explained course, especially where visuals are used (and just maths jargon). The teachers take the concepts and step you through them very clearly in most cases, though sometimes when the concepts get more complex, learners like myself would appreciate if it could not rushed through.

by Andrew A


This course was challenging, but manageable. I like that 100% correct answers are required on the exams, which forces you to understand all the key points. The information in the course material relates enough to the exams, so if you understand the concepts, the assessment is quite doable.

by Zhao Y


Very good introduction for newbees. I like the style that it gives you a lot of quiz immediately after the teaching vedio. The only thing to improve is the introduction to the finnal assignment, which is some how misleading. But after consulting on the forum, I finally have it done.

by Pa O C


This is an essential course for anyone looking to build up a strong foundation for mathematics for data science. The python codes are a joy to read and practice and the final assignment was a culmination of all things learned. Kudos to the instructor and mentors.