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Introduction to Bayesian Computing

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Mira A.

Course director

Description

COURSE OBJECTIVES
The students will be able to estimate a complex Bayesian model and to provide estimates uncertainty quantifications.

 

COURSE DESCRIPTION

  • Markov chains
  • Monte Carlo simulation
  • Importance sampling
  • Markov chain Monte Carlo (MCMC) methods
  • Adaptive MCMC
  • MCMC convergence diagnostics
  • Approximate Bayesian Computation

 

LEARNING METHODS
There will be theoretical and applied (with R statistical software)  frontal and online lectures compliant with COVID-19 guidelines.

 

EXAMINATION INFORMATION
A project that will involve the analysis of data using the computational methodologies learned during the course will count for 100% of the final grade.

 

REFERENCES
Students are requested to bring to class their own laptop with the R statistical software installed.

The material needed for this course will be provided during the course itself in the form of slides, papers and reference books.

 

 

Education