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学生对 伦敦帝国学院 提供的 Introduction to Statistics & Data Analysis in Public Health 的评价和反馈

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234 条评论


Welcome to Introduction to Statistics & Data Analysis in Public Health! This course will teach you the core building blocks of statistical analysis - types of variables, common distributions, hypothesis testing - but, more than that, it will enable you to take a data set you've never seen before, describe its keys features, get to know its strengths and quirks, run some vital basic analyses and then formulate and test hypotheses based on means and proportions. You'll then have a solid grounding to move on to more sophisticated analysis and take the other courses in the series. You'll learn the popular, flexible and completely free software R, used by statistics and machine learning practitioners everywhere. It's hands-on, so you'll first learn about how to phrase a testable hypothesis via examples of medical research as reported by the media. Then you'll work through a data set on fruit and vegetable eating habits: data that are realistically messy, because that's what public health data sets are like in reality. There will be mini-quizzes with feedback along the way to check your understanding. The course will sharpen your ability to think critically and not take things for granted: in this age of uncontrolled algorithms and fake news, these skills are more important than ever. Prerequisites Some formulae are given to aid understanding, but this is not one of those courses where you need a mathematics degree to follow it. You will need only basic numeracy (for example, we will not use calculus) and familiarity with graphical and tabular ways of presenting results. No knowledge of R or programming is assumed....



May 25, 2019

Was a very nicely done and clear course to build or re-build foundation for most common statistical concepts and an intro to using R via R-Studio for your work with them on the basics.


Oct 11, 2019

This is the best course among all I've taken..

The instructor has presented the content precisely.

I highly recommend to those who are looking to explore R in the field of health


126 - Introduction to Statistics & Data Analysis in Public Health 的 150 个评论(共 240 个)

创建者 Muhammad A

Mar 31, 2021

A great course with a lot of examples for practicing

创建者 Губайдуллина А Р

Sep 14, 2020

Хорошие основы, многое сложилось в цельную картинку


Oct 26, 2020

A truly excellent R course for beginners like me!

创建者 Nathiya N

Jun 6, 2020

I found the course really interesting and useful.

创建者 bouopda k y

Sep 30, 2020

très interessant comme cours pour devenir expert

创建者 Marzhan N

Sep 9, 2020

Thank you for the interesting and useful course!

创建者 alexa v

Aug 3, 2022

this course was interesting and easy to learn

创建者 Adegorite O D

Jul 29, 2020

Awesome course for anyone that is interested

创建者 Norberto I T

Aug 16, 2020

The abililty to use R is very,very useful.

创建者 Nacho O

Dec 7, 2019

A great introduction, it's worth the time.

创建者 Oriolowo T A

Jun 14, 2019

Awesome course and the teaching was superb

创建者 salome a

May 10, 2019

Excellent introduction to statistics and R

创建者 Anderson S

Apr 27, 2019

I love the simplicity of the explanations

创建者 Dhan K B

Aug 15, 2020

Good course to get into Health analytics

创建者 Rizky M

Aug 1, 2019

Very helpful, and interesting lecturer !

创建者 Tanawin N

Sep 2, 2019

Great experience through great efforts!

创建者 AmanySamirMohamed A

Oct 30, 2021

m​ore helpful and add new skills to me

创建者 Yan M

Jan 4, 2021

Very clear! Highly recommend this one!


Jul 16, 2020

Highly educative with relevant content

创建者 Thomas J H

Mar 31, 2019

Clear and no nonsense. Do recommend.

创建者 Shaibu I

Apr 8, 2020

Fantastic course and lecturer, kudos

创建者 Benedict S

Jan 30, 2021

Was truly an up skill. well thought

创建者 Juliana P R

Oct 18, 2020

I've learnt a lot with this course!

创建者 Sara A

Mar 31, 2020

Very useful introductory course.

创建者 Angelo A P L

Aug 24, 2020

Excellent course, good content.