LearnBayes (version 2.15.1)

rwmetrop: Random walk Metropolis algorithm of a posterior distribution

Description

Simulates iterates of a random walk Metropolis chain for an arbitrary real-valued posterior density defined by the user

Usage

rwmetrop(logpost,proposal,start,m,...)

Arguments

logpost

function defining the log posterior density

proposal

a list containing var, an estimated variance-covariance matrix, and scale, the Metropolis scale factor

start

vector containing the starting value of the parameter

m

the number of iterations of the chain

...

data that is used in the function logpost

Value

par

a matrix of simulated values where each row corresponds to a value of the vector parameter

accept

the acceptance rate of the algorithm

Examples

Run this code
# NOT RUN {
data=c(6,2,3,10)
varcov=diag(c(1,1))
proposal=list(var=varcov,scale=2)
start=array(c(1,1),c(1,2))
m=1000
s=rwmetrop(logctablepost,proposal,start,m,data)
# }

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