Bayesian Modeling with RJAGS

Updated on

Course overview

Provider
Datacamp
Course type
Free trial availiable
Deadline
Flexible
Duration
4 hours
Certificate
Available on completion
Course author
Alicia Johnson

Description

In this course, you'll learn how to implement more advanced Bayesian models using RJAGS.
The Bayesian approach to statistics and machine learning is logical, flexible, and intuitive. In this course, you will engineer and analyze a family of foundational, generalizable Bayesian models. These range in scope from fundamental one-parameter models to intermediate multivariate & generalized linear regression models. The popularity of such Bayesian models has grown along with the availability of computing resources required for their implementation. You will utilize one of these resources - the rjags package in R. Combining the power of R with the JAGS (Just Another Gibbs Sampler) engine, rjags provides a framework for Bayesian modeling, inference, and prediction.

Similar courses

Bayesian Statistics: From Concept to Data Analysis
  • Flexible deadline
  • 12 hours
  • Certificate
Probability Theory: Foundation for Data Science
  • Flexible deadline
  • 48 hours
  • Certificate
  • English language

  • Recommended provider

  • Certificate available