Title: | Robust Adaptive Metropolis Algorithm |
Version: | 0.1.2 |
Date: | 2021-10-06 |
Description: | Function for adapting the shape of the random walk Metropolis proposal as specified by robust adaptive Metropolis algorithm by Vihola (2012) <doi:10.1007/s11222-011-9269-5>. The package also includes fast functions for rank-one Cholesky update and downdate. These functions can be used directly from R or the corresponding C++ header files can be easily linked to other R packages. |
License: | GPL-2 | GPL-3 [expanded from: GPL (≥ 2)] |
BugReports: | https://github.com/helske/ramcmc/issues |
Suggests: | testthat, knitr, rmarkdown |
Imports: | Rcpp (≥ 0.12.8) |
LinkingTo: | Rcpp, RcppArmadillo |
RoxygenNote: | 5.0.1 |
VignetteBuilder: | knitr |
NeedsCompilation: | yes |
Packaged: | 2021-10-06 20:50:12 UTC; jovetale |
Author: | Jouni Helske |
Maintainer: | Jouni Helske <jouni.helske@iki.fi> |
Repository: | CRAN |
Date/Publication: | 2021-10-06 21:40:02 UTC |
Update the Proposal of RAM Algorithm
Description
Given the lower triangular matrix S obtained from the Cholesky decomposition of the shape
of the proposal distribution, function adapt_S
updates S according to the RAM algorithm.
Usage
adapt_S(S, u, current, n, target = 0.234, gamma = 2/3)
Arguments
S |
A lower triangular matrix corresponding to the Cholesky decomposition of the scale of the proposal distribution. |
u |
A vector with with length matching with the dimensions of S. |
current |
The current acceptance probability. |
n |
Scaling parameter corresponding to the current iteration number. |
target |
The target acceptance rate. Default is 0.234. |
gamma |
Scaling parameter. Default is 2/3. |
Value
If the resulting matrix is positive definite, an updated value of S. Otherwise original S is returned.
Note
If the downdating would result non-positive definite matrix, no adaptation is performed.
References
Matti Vihola (2012). "Robust adaptive Metropolis algorithm with coerced acceptance rate". Statistics and Computing, 22: 997. doi:10.1007/s11222-011-9269-5
Examples
# sample from standard normal distribution
# use proposals from the uniform distribution on
# interval (-s, s), where we adapt s
adapt_mcmc <- function(n = 10000, s) {
x <- numeric(n)
loglik_old <- dnorm(x[1], log = TRUE)
for (i in 2:n) {
u <- s * runif(1, -1, 1)
prop <- x[i] + u
loglik <- dnorm(prop, log = TRUE)
accept_prob <- min(1, exp(loglik - loglik_old))
if (runif(1) < accept_prob) {
x[i] <- prop
loglik_old <- loglik
} else {
x[i] <- x[i - 1]
}
# Adapt only during the burn-in
if (i < n/2) {
s <- adapt_S(s, u, accept_prob, i)
}
}
list(x = x[(n/2):n], s = s)
}
out <- adapt_mcmc(1e5, 2)
out$s
hist(out$x)
# acceptance rate:
1 / mean(rle(out$x)$lengths)
Rank-one Downdate of Cholesky Decomposition
Description
Given the lower triangular matrix L obtained from the Cholesky decomposition of A,
function chol_downdate
updates L such that it corresponds to the decomposition of A - u*u'
(if such decomposition exists).
Usage
chol_downdate(L, u)
Arguments
L |
A lower triangular matrix. Strictly upper diagonal part is not referenced. |
u |
A vector with with length matching with the dimensions of L. |
Value
Updated L.
Note
The function does not check that the resulting matrix is positive semidefinite.
Rank-one Update of Cholesky Decomposition
Description
Given the lower triangular matrix L obtained from the Cholesky decomposition of A,
function chol_update
updates L such that it corresponds to the decomposition of A + u*u'.
Usage
chol_update(L, u)
Arguments
L |
A lower triangular matrix. Strictly upper diagonal part is not referenced. |
u |
A vector with with length matching with the dimensions of L. |
Value
Updated L.
Examples
L <- matrix(c(4,3,0,5), 2, 2)
u <- c(1, 2)
chol_update(L, u)
t(chol(L %*% t(L) + u %*% t(u)))