This repo contains the codes, images, report and slides for the project of the course - MTH535A: An Introduction To Bayesian Analysis
at IIT Kanpur during the academic year 2022-2023.
- Arkajyoti Bhattacharjee
- Devyanshi Singh
- Dhruvil Sangani
- Nitin Garg
- Rishabh Gupta
Bernoulli factory based Portkey and Flipped Portkey MCMC Algorithms: Theory and Examples
[Slides]
[Report]
In this report, we present two stable Bernoulli factories that generate events within those class of acceptance probabilities which do not involve the ratio of intractable target (posterior) distribution evaluated at two points. The efficiency of the methods rely on obtaining a reasonable lower and upper bound on the target density and we present examples were such bounds are viable. The report is primarily based on [1].
Section | Topic |
---|---|
1 | Introduction |
2 | Barker's method and the 2-coin algorithm |
3 | Portkey Barker's Method |
4 | Flipped portkey two-coin algorithm |
5 | Examples
|
- Data: Contains the saved data files.
- R Codes: Contains the R codes to replicate the figures in the report and slides.
- figures: Contains the figures present in our report adn slides.