Markov Chain Monte Carlo sampling of posterior distribution

MCMC sampling of using a cascaded metropolis

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NOTE: I recommend using my new GWMCMC sampler which can also be downloaded from the file exchange: http://www.mathworks.com/matlabcentral/fileexchange/49820-the-mcmc-hammer--gwmcmc
Markov Chain Monte Carlo sampling of posterior distribution

A metropolis sampler
[mmc,logP]=mcmc(initialm,loglikelihood,logmodelprior,stepfunction,mccount,skip)
---------
initialm: starting point fopr random walk
loglikelihood: function handle to likelihood function: logL(m)
logprior: function handle to the log model priori probability: logPapriori(m)
stepfunction: function handle with no inputs which returns a random
step in the random walk. (note stepfunction can also be a
matrix describing the size of a normally distributed
step.)
mccount: How long should the markov chain be?
skip: Thin the chain by only storing every N'th step [default=10]



EXAMPLE USAGE: fit a normal distribution to data
-------------------------------------------
data=randn(100,1)*2+3;
logmodelprior=@(m)0; %use a flat prior.
loglike=@(m)sum(log(normpdf(data,m(1),m(2))));
minit=[0 1];
m=mcmc(minit,loglike,logmodelprior,[.2 .5],10000);
m(1:100,:)=[]; %crop drift
plotmatrix(m);


--- Aslak Grinsted 2010

Cite As

Aslak Grinsted (2026). Markov Chain Monte Carlo sampling of posterior distribution (https://www.mathworks.com/matlabcentral/fileexchange/47912-markov-chain-monte-carlo-sampling-of-posterior-distribution), MATLAB Central File Exchange. Retrieved .

Acknowledgements

Inspired by: Ensemble MCMC sampler

Inspired: Ensemble MCMC sampler

General Information

MATLAB Release Compatibility

  • Compatible with any release

Platform Compatibility

  • Windows
  • macOS
  • Linux
Version Published Release Notes Action
1.5.0.0

updated link in description again

1.4.0.0

updated GWMCMC link in description

1.3.0.0

changed description

1.2.0.0

changed title

1.1.0.0

Bugfix for small values of skip

1.0.0.0