Chevron Left
Back to A Crash Course in Causality: Inferring Causal Effects from Observational Data

Learner Reviews & Feedback for A Crash Course in Causality: Inferring Causal Effects from Observational Data by University of Pennsylvania

4.7
stars
550 ratings

About the Course

We have all heard the phrase “correlation does not equal causation.” What, then, does equal causation? This course aims to answer that question and more! Over a period of 5 weeks, you will learn how causal effects are defined, what assumptions about your data and models are necessary, and how to implement and interpret some popular statistical methods. Learners will have the opportunity to apply these methods to example data in R (free statistical software environment). At the end of the course, learners should be able to: 1. Define causal effects using potential outcomes 2. Describe the difference between association and causation 3. Express assumptions with causal graphs 4. Implement several types of causal inference methods (e.g. matching, instrumental variables, inverse probability of treatment weighting) 5. Identify which causal assumptions are necessary for each type of statistical method So join us.... and discover for yourself why modern statistical methods for estimating causal effects are indispensable in so many fields of study!...

Top reviews

JC

Invalid date

A high quality course that delivers what it says in the title. Well-paced introduction to the potential outcomes framework, with a nice balance of theoretical and practical aspects.

PH

Invalid date

I completed all 4 available courses in causal inference on Coursera. This one has the best teaching quality. The material is very clear and self-contained!

Filter by:

51 - 75 of 175 Reviews for A Crash Course in Causality: Inferring Causal Effects from Observational Data

By Alice G

Feb 21, 2021

Really wonderful course--I learned so much in the way of theory and practical application in R. Some links need to be updated and it would be best to provide students with answers to worked examples for the quiz questions.

By Monica T

Apr 2, 2024

I really appreciate that this course is available on Coursera. It was exactly what I was looking for - a well-explained reliable course with interesting examples, quizzes and small projects to try in R.

By Weifeng J

Sep 12, 2021

Great introduction on the causal analysis.The instructor did a great job on explaining the topic in a logical and rigorous way. R codes are very relevant and helpful to digest the material as well.

By Fang W

May 23, 2023

Great class! I have learned a lot on causal inference to conduct experiment analysis at work. The R coding sessions and lectures on the logic/math behind are really helpful.

By Anastasia G

Feb 21, 2021

A great start for those starting to explore causal inference. The somewhat dry delivery of the lectures is fully compensated by how clear and informative they are.

By Keshab S

Apr 4, 2021

My work involves working with observational data. This course taught me to think in more formal and organized way on topics and questions of causal inference.

By ALEXANDER G

Feb 18, 2022

Great introduction to the field covering model synthesis of causality ideals. Glitches in assignments - make sure to check the discussion for workarounds.

By Giulio B

Mar 12, 2021

Excellent video lectures. Challenging end of module quizzes. I found more challenging doing the practical exercises because I had no experience with R.

By Георгий А

Dec 15, 2021

A very thorough and pleasant intro into the topic. Thanks from Russia! To the lecturer - be more confident in yourself! You are great at your stuff :)

By Oksana B

Nov 28, 2021

Great course! I am glad i came accross it. Helped me a great deal with my project at work. I wish there were more courses by this professor.

By Andrew

May 15, 2018

This course is really fantastic for all levels. Very thorough explanations and helpful illustrations. Many thanks for putting this together!

By Yi H

Aug 26, 2022

This course is very helpful for people to understand basics of causual inference with clear explaination and rich real-world examples.

By Сергей М

May 24, 2021

Очень лаконичный и полезный курс. Очень помог разобраться в теме Causal Inference. Отлично подходит для начала вхождения в данную тему.

By Emilio

Jul 26, 2023

Great course. Very clear and practical.

Personally I would have preferred coding and exercises in Python, but overall a great course.

By Ted L

Aug 24, 2019

Well structured to provide solid understanding of fundamentals, good intuition, and a basic view of applying the covered material.

By Kin H L L

Mar 11, 2022

Covered from mathematical concepts to practical statistical analysis with R. A perfect course for newcomers on causal inference.

By Mario M

Jan 12, 2020

Great introduction. Immediately used new knowledge in current job (marketing data scientist). Recommended course to co-workers.

By Gabriel V

Oct 8, 2022

I was so glad to do this course, it was really helpful for me. How do I make a Citation APA from this Course? Thanks lot.

By JK

Oct 24, 2017

To those with some advanced statistics background, this would truly be helpful to catch up econometric thought processes.

By Akorlie A N

Dec 28, 2020

Excellent course. This course helped me to develop my intuition on some of the more abstract concepts in causality.

By Hao L

Aug 31, 2017

Not only good for bio stats, it has also profound impact to my understanding of a/b testing in the internet world.

By Abdulaziz T B

Aug 11, 2017

This is an excellent course taught by a very competent professor in a very simple to understand and intuitive way.

By Vipul J

Dec 25, 2022

This course is excellent at laying the foundations for casualty. Only con is that the slides cannot be downloaded

By Georges A

Dec 20, 2020

Excellent course, extremely well presented that helps clarify a lot of statistical concepts in an intuitive way.

By Minha H

Jul 3, 2021

Good course to review key techniques in causal inference. Would be nice to have more in-depth course in sequel.