This repository is for a group project for the course MTH707A: Markov Chain Monte Carlo during the academic session 2021-2022 (even semester) at IIT Kanpur.
Adaptive Markov chain Monte Carlo: A Review
[Report]
Prof. Dootika Vats, Department of Mathematics and Statistics, IIT Kanpur
We briefly review the adaptive Markov chain Monte Carlo techniques using some examples. We also talk about the theoretical properties like stationarity and ergodicity of such algorithms.
Section | Topic |
---|---|
1 | Introduction |
2 | Setup and Notation |
3 | Examples
|
4 | Ergodicity |
5 | Conclusions |
- Examples of Adaptive MCMC - Gareth O. Roberts, Jeffrey S. Rosenthal
- Coupling and Ergodicity of Adaptive MCMC algorithms - Gareth O. Roberts, Jeffrey S. Rosenthal
- Optimal Proposal Distributions and Adaptive MCMC - Jeffrey Rosenthal
- Adaptive Markov chain Monte Carlo: Theory and Methods - Yves Atchade, Gersende Fort and Eric Moulines, Pierre Priouret
- An Adaptive Metropolis Algorithm - Harrio et al.