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Applied Bayesian Statistics

#f03c15 Required Toolboxes: JAGS, STAN, ggplot

This repository consist of a compendium of assignments and their respective solutions for an advanced course in Applied Bayesian Statistics. It imparts a comprehensive understanding of theoretical, computational, and practical aspects of the Bayesian statistics. Throughout the course, the following topics are covered in-depth:

  • A contrastive examination of Bayesian and frequentist methodologies
  • Bayesian learning paradigms
  • Commonly employed prior distributions
  • Techniques for succinctly summarizing posterior distributions

Furthermore, the course delves into modern Bayesian computational algorithms, primarily Markov Chain Monte Carlo (MCMC) techniques, executed through the Python/R programming languages. The central subjects covered in this segment include:

  • Monte Carlo approximations
  • Gibbs sampling
  • Diagnostics for convergence evaluation
  • Just Another Gibbs Sampler (JAGS)

Armed with these computational tools, participants will engage in the application of Bayesian methodologies to a variety of data analysis problems, including but not limited to:

  • Multivariate linear regression
  • Generalized linear models
  • Hierarchical modeling
  • Surrogate models
  • Gaussian Proccess

Throughout the course, comparative model evaluation and model adequacy testing are emphasized as fundamental components of Bayesian statistics. Through this course, one will attain a comprehensive understanding of these concepts and the ability to implement them in real-world scenarios.

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This repository consist of a compendium of assignments and their respective solutions for an advanced course in Applied Bayesian Statistics

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