Back to A Crash Course in Causality: Inferring Causal Effects from Observational Data
University of Pennsylvania

A Crash Course in Causality: Inferring Causal Effects from Observational Data

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!

Status: Correlation Analysis
Status: Statistical Inference
IntermediateCourse18 hours

Featured reviews

KS

5.0Reviewed Apr 5, 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.

YS

5.0Reviewed Nov 14, 2024

This is a great course to me! This course really helps me have a better understanding of what constitutes causal effects. I really appreciate him for this course!

GB

5.0Reviewed 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.

PH

5.0Reviewed Sep 7, 2020

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!

AG

5.0Reviewed 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.

YH

5.0Reviewed Aug 27, 2022

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

OB

5.0Reviewed Nov 28, 2021

G​reat 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.

CE

5.0Reviewed Jul 16, 2017

Works best on double speed (from settings menu of each video). Content is delivered in clear and relatable manner using interesting real world examples.

PD

4.0Reviewed Jul 15, 2018

Excellent course. Could use a small restructuring, as I had to go through the material more than once, but otherwise, very good material and presentation.

WJ

5.0Reviewed 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.

FW

5.0Reviewed 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.

MM

5.0Reviewed Dec 28, 2017

I really enjoyed this course, the pace could be more even in parts. Sometimes the pace could be more even and some more books/reference material for further study would be nice.

All reviews

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