Back to Bayesian Statistics
Duke University

Bayesian Statistics

This course describes Bayesian statistics, in which one's inferences about parameters or hypotheses are updated as evidence accumulates. You will learn to use Bayes’ rule to transform prior probabilities into posterior probabilities, and be introduced to the underlying theory and perspective of the Bayesian paradigm. The course will apply Bayesian methods to several practical problems, to show end-to-end Bayesian analyses that move from framing the question to building models to eliciting prior probabilities to implementing in R (free statistical software) the final posterior distribution. Additionally, the course will introduce credible regions, Bayesian comparisons of means and proportions, Bayesian regression and inference using multiple models, and discussion of Bayesian prediction. We assume learners in this course have background knowledge equivalent to what is covered in the earlier three courses in this specialization: "Introduction to Probability and Data," "Inferential Statistics," and "Linear Regression and Modeling."

Status: Probability Distribution
Status: Probability
IntermediateCourse35 hours

Featured reviews

AA

4.0Reviewed Aug 24, 2017

An interesting and challenging course, would be better with more real examples and explanation as some of the material felt rushed

KM

4.0Reviewed Jun 2, 2017

Learnt a lot. Though the subject material was hard to grasp first hand, it is good that instructor was readily available to help us through.

NR

4.0Reviewed Jul 5, 2019

This course through the material too fast. The content should have been spread out over two courses in my opinion.

MB

5.0Reviewed Oct 25, 2016

Great course with clear instruction and a final peer-review project with clear expectations and explanations.

JN

4.0Reviewed Jan 2, 2017

Theis course is substantially more difficult than the three first ones, and the material is scarce. However, I must admit that this is one of the courses I have ever learnt the most

MC

4.0Reviewed Jun 20, 2018

It was a good course, though I would include more coursework and exercises in R to assist with comprehending a difficult subject. Overall, good course for something that's difficult to teach.

MR

5.0Reviewed Sep 20, 2017

Great course. Difficult to apprehend sometimes as the Frequentist paradigm is learned first but once you get it, it is really amazing to see the believe update in action with data.

MS

4.0Reviewed Sep 9, 2019

A bit more depth in explaining conjugacy in priors and posteriors will be very helpful. A possible way would be to have more example illustrations.

CH

5.0Reviewed Oct 29, 2017

The course is compact that I've learnt a lot of new concepts in a week of coursework. A good sampler of topics related to Bayesian Statistics.

MZ

4.0Reviewed Jan 6, 2020

It's a good one, but not as previous courses. Week 3 isn't well explained as other weeks. Hope it can be further improved

C

4.0Reviewed Jun 11, 2018

Week 3 was too much information too soon, but week 4 was great again like the other courses in this specialisation. Learned so much, thanks!

FG

5.0Reviewed Dec 15, 2016

This is my first course on bayesian statistics, I really like it, it was step by step, and helps to clarify lots of concepts of frequentist statistic.

All reviews

Showing: 20 of 255

Richard Millington
1.0
Reviewed Jan 24, 2019
Tansel Tanner Arif
3.0
Reviewed Dec 5, 2018
Sara Melvin
1.0
Reviewed Dec 23, 2018
Ong Yao Rui Terenze
1.0
Reviewed Mar 16, 2019
Anna Peters
2.0
Reviewed Oct 24, 2018
Toan Le Thien
2.0
Reviewed Jan 26, 2019
Jo Totland
1.0
Reviewed Jul 16, 2020
Tulio Carreira
2.0
Reviewed Dec 11, 2018
k. p. b.
3.0
Reviewed Feb 25, 2018
Juan Pablo Stocca
3.0
Reviewed Aug 12, 2018
mark nuneviller
1.0
Reviewed Jul 30, 2018
Chen Ni
1.0
Reviewed Apr 11, 2019
Val Schwebach
1.0
Reviewed Feb 26, 2018
Bugra Yilmaz
1.0
Reviewed Jun 1, 2020
Anna Daniel
1.0
Reviewed May 23, 2017
Zack Huang
1.0
Reviewed Aug 2, 2022
Dario Bahena
3.0
Reviewed Jun 17, 2019
Elizabeth C Sawyer
3.0
Reviewed Aug 5, 2018
Matthew Alexander
1.0
Reviewed Aug 1, 2022
mfondoum roland
5.0
Reviewed Sep 20, 2017