Back to Bayesian Statistics: Techniques and Models
University of California, Santa Cruz

Bayesian Statistics: Techniques and Models

This is the second of a two-course sequence introducing the fundamentals of Bayesian statistics. It builds on the course Bayesian Statistics: From Concept to Data Analysis, which introduces Bayesian methods through use of simple conjugate models. Real-world data often require more sophisticated models to reach realistic conclusions. This course aims to expand our “Bayesian toolbox” with more general models, and computational techniques to fit them. In particular, we will introduce Markov chain Monte Carlo (MCMC) methods, which allow sampling from posterior distributions that have no analytical solution. We will use the open-source, freely available software R (some experience is assumed, e.g., completing the previous course in R) and JAGS (no experience required). We will learn how to construct, fit, assess, and compare Bayesian statistical models to answer scientific questions involving continuous, binary, and count data. This course combines lecture videos, computer demonstrations, readings, exercises, and discussion boards to create an active learning experience. The lectures provide some of the basic mathematical development, explanations of the statistical modeling process, and a few basic modeling techniques commonly used by statisticians. Computer demonstrations provide concrete, practical walkthroughs. Completion of this course will give you access to a wide range of Bayesian analytical tools, customizable to your data.

Status: Model Evaluation
Status: Statistical Modeling
IntermediateCourse30 hours

Featured reviews

MS

5.0Reviewed Aug 19, 2020

Excellent course for introducing yourself to Monte Carlo Methods applied to Bayesian statistics. Highly recommended!

ML

5.0Reviewed Nov 30, 2024

Very good instructor, knowledgeable and thorough, touching the right level of details with big picture in mind, and providing practical guide for hands-on Bayesian data analysis.

KD

5.0Reviewed Jan 8, 2020

Excellent teacher and very well taught. Right amount of theory and programming combination. Made the subject easy to learn. Enjoyed it very much. Thank you very much.

CW

5.0Reviewed Nov 1, 2020

I really enjoy taking this course. I have taken Bayesian course before so this is more like a systematic review for me and I still learned a lot!

JH

5.0Reviewed Oct 31, 2017

This course is excellent! The material is very very interesting, the videos are of high quality and the quizzes and project really helps you getting it together. I really enjoyed it!!!

IK

5.0Reviewed Aug 26, 2024

This course seems to cover its material clearly, and the material is explained clearly. The quiz/homeworks help to reinforce the lectures.

EK

5.0Reviewed Dec 13, 2020

A thorough and comprehensive overview of applied Bayesian modelling which will give you the confidence to start applying Bayesian tools in your own work.

EG

4.0Reviewed Jan 20, 2021

Very comprehensive and challenging course. The explanations/rationale could be done better In the statistical programming parts.

BA

5.0Reviewed Jul 7, 2018

This is a great course for an introduction to Bayesian Statistics class. Prior knowledge of the use of R can be very helpful. Thanks for such a wonderful course!!!

RC

5.0Reviewed May 9, 2020

Great course. The instructor provided detailed code examples and clear explanations for model intuitions. The final capstone project is a plus.

RR

5.0Reviewed Aug 31, 2020

One of the best practical math courses present in coursera. Loved the course and will surely look upto the next course eagerly.

DA

5.0Reviewed Jan 9, 2018

The best course I had in statistics. unlike many other courses the instructor does not ignore the underlying mathematics of the codes.

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