Repository for Monte Carlo Methods in Statistics -- includes code for sampling (rejection, metropolis-hastings, Gibbs) and for Bayesian inference + model selection
This repository serves as a personal reference for the SDS386D: Monte Carlo Methods In Statistics course at UT Austin
- Assignment 1: rejection sampling, importance sampling
- Assignment 2: MCMC
- Assignment 3: MCMC, Metropolis-Hastings, Bayesian inference
- Assignment 4: Gibbs sampling, expected value from the predictive density, use of latent variables, Bayesian inference
- Assignment 5: Bayesian inference for a mixture model, Dirichlet prior, use of latent variables, Gibbs sampling with a Metropolis step
- Assignment 6: sequential Monte Carlo: Kalman filter, particle filter
- midterm: data augmentation via slice sampling, Bayesian inference, Metropolis-Hastings, Gibbs sampling with a Metropolis step
- final: Bayesian model selection