Online training - Computational Bayesian methods using brms in R
 
Where and When: Online (Zoom) - June, 14-18
 
 
This course provides a relatively accessible and technically non-demanding 
introduction to the basic workflow for fitting different kinds of linear models 
using a powerful front-end R package for Stan called brms.
 
 
We assume familiarity with R. Participants will benefit most if they have 
previously fit linear models and linear mixed models (using lme4) in R, in any 
scientific domain. No knowledge of calculus or linear algebra is assumed, but 
basic school level mathematics knowledge is assumed (this will be quickly 
revisited in class).
 
 
After completing this course, the participants will
 

have become familiar with the foundations of Bayesian inference

be able to fit a range of multiple regression models and hierarchical models 
for normally distributed data, for log-normal, and binomially distributed data.

be able to communicate the results of a Bayesian analysis

know how to select priors for their models using prior predictive checks

know how to assess the descriptive accuracy of a model using posterior 
predictive checks.
 
 
Course website: [ https://www.physalia-courses.org/courses-workshops/course46/ 
]( https://www.physalia-courses.org/courses-workshops/course46/ )
 
 
Here you can find the full list of our courses and Workshops: [  
https://www.physalia-courses.org/courses-workshops/  ]( 
https://www.physalia-courses.org/courses-workshops/ )
 
Should you have any questions, please feel free to contact us: 
i...@physalia-courses.org
 
--------------------

Carlo Pecoraro, Ph.D


Physalia-courses DIRECTOR

i...@physalia-courses.org

mobile: +49 17645230846

Follow us on [ Twitter ]( https://twitter.com/Physacourses )
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