knitr::opts_chunk$set(fig.dim=c(9, 9), out.width=600, out.height=600)
We start by loading the dataset that the mcmc
package includes. We will use
the logit
data set to obtain a posterior distribution of the model parameters
using the MCMC
function.
library(fmcmc) data(logit, package = "mcmc") out <- glm(y ~ x1 + x2 + x3 + x4, data = logit, family = binomial, x = TRUE) beta.init <- as.numeric(coefficients(out))
To use the Metropolis-Hastings MCMC algorithm, the function should be
(in principle) the log unnormalized posterior. The following block of code,
extracted from the mcmc
package vignette "MCMC Package Example,"
creates the function that we will be using:
lupost_factory <- function(x, y) function(beta) { eta <- as.numeric(x %*% beta) logp <- ifelse(eta < 0, eta - log1p(exp(eta)), - log1p(exp(- eta))) logq <- ifelse(eta < 0, - log1p(exp(eta)), - eta - log1p(exp(- eta))) logl <- sum(logp[y == 1]) + sum(logq[y == 0]) return(logl - sum(beta^2) / 8) } lupost <- lupost_factory(out$x, out$y)
Let's give it the first try. In this case, we will use the beta estimates from the
estimated GLM model as a starting point for the algorithm, and we will ask it to
sample 1e4 points from the posterior distribution (nsteps
).
# to get reproducible results set.seed(42) out <- MCMC( initial = beta.init, fun = lupost, nsteps = 1e3 )
Since the resulting object is of class mcmc
(from the coda
R package), we
can use all the functions included in coda
for model diagnostics:
library(coda) plot(out[,1:3])
So this chain has very poor mixing, so let's try again by using a smaller scale for the normal kernel proposal moving it from 1 (the default value) to .2:
# to get reproducible results set.seed(42) out <- MCMC( initial = beta.init, fun = lupost, nsteps = 1e3, kernel = kernel_normal(scale = .2) )
The kernel_normal
--the default kernel in the MCMC
function--returns
an object of class fmcmc_kernel
. In principle, it consists of a list of two
functions that are used by the MCMC
routine: proposal
, the proposal kernel
function, and logratio
, the function that returns the log of the
Metropolis-Hastings ratio. We will talk more about fmcmc_kernel
objects later.
Now, let's look at the first three variables of our model:
plot(out[,1:3])
Better. Now, ideally we should only be using observations from the stationary
distribution. Let's give it another try checking for convergence every 1,000
steps using the convergence_geweke
:
# to get reproducible results set.seed(42) out <- MCMC( initial = beta.init, fun = lupost, nsteps = 1e4, kernel = kernel_normal(scale = .2), conv_checker = convergence_geweke(200) )
A bit better. As announced by MCMC
, the convergence_geweke
checker suggests
that the chain reached a stationary state.
With this in hand, we can now rerun the algorithm such that we start from the
last couple of steps of the chain, this time, without convergence monitoring as
it is no longer necessary.
We will increase the number of steps (sample size), use two chains using parallel computing, and add some thinning to reduce autocorrelation:
# Now, we change the seed, so we get a different stream of # pseudo random numbers set.seed(112) out_final <- MCMC( initial = out, # Automagically takes the last 2 points fun = lupost, nsteps = 5e4, # Increasing the sample size kernel = kernel_normal(scale = .2), thin = 10, nchains = 2L, # Running parallel chains multicore = TRUE # in parallel. )
Notice that, instead of specifying the starting points for each
chain, we passed the out
object to initial
. By default, if
initial
is of class mcmc
, MCMC
will take the last nchains
points from
the chain as starting point for the new sequence. If initial
is of class
mcmc.list
, the number of chains in initial
must match the nchains
parameter. We now see that the output posterior distribution appears to be
stationary
plot(out_final[, 1:3]) summary(out_final[, 1:3])
fmcmc_kernel
objects are environments that are passed to the MCMC
function.
While the MCMC
function only returns the mcmc
class object (as defined in
the coda
package), users can exploit the fact that the kernel objects are
environments to reuse them or inspect them once the MCMC
function returns.
For example, fmcmc_kernel
objects can be useful with adaptive
kernels as users can review the covariance structure or other
components.
To illustrate this, let's re-do the MCMC chain of the previous example but using an adaptive kernel instead, in particular, Haario's 2010 adaptive metropolis.
khaario <- kernel_adapt(freq = 1, warmup = 500)
The MCMC function will update the kernel at every step (freq = 1
), and the
adaptation will start from step 500 (warmup = 500
). We can see that some of
its components haven't been initialized or have a default starting value before
the call of the MCMC
function:
# Number of iterations (absolute count, starts in 0) khaario$abs_iter # Variance covariance matrix (is empty... for now) khaario$Sigma
Let's see how it works:
set.seed(12) out_haario_1 <- MCMC( initial = out, fun = lupost, nsteps = 1000, # We will only run the chain for 100 steps kernel = khaario, # We passed the predefined kernel thin = 1, # No thining here nchains = 1L, # A single chain multicore = FALSE # Running in serial )
Let's inspect the output and mark when the adaptation starts:
traceplot(out_haario_1[,1], main = "Traceplot of the first parameter") abline(v = 500, col = "red", lwd = 2, lty=2)
If we look at the khaario
kernel, the fmcmc_kernel
object, we can see that
things changed from the first time we ran it
# Number of iterations (absolute count, the counts equal the number of steps) khaario$abs_iter # Variance covariance matrix (now is not empty) (Sigma1 <- khaario$Sigma)
If we re-run the chain, using as starting point the last step of the first run, we can also continue using the kernel object:
out_haario_2 <- MCMC( initial = out_haario_1, fun = lupost, nsteps = 2000, # We will only run the chain for 2000 steps now kernel = khaario, # Same as before, same kernel. thin = 1, nchains = 1L, multicore = FALSE, seed = 555 # We can also specify the seed in the MCMC function )
Let's see again how does everything looks like:
traceplot(out_haario_2[,1], main = "Traceplot of the first parameter") abline(v = 500, col = "red", lwd = 2, lty=2)
As shown in the plot, since the warmup period already passed for the kernel object, the adaptation process is happening at every step, so we don't see a big break at step 500 as before. Let's see the counts and the covariance matrix and compare it with the previous one:
# Number of iterations (absolute count, the counts equal the number of steps) # This will have 1000 (first run) + 2000 (second run) steps khaario$abs_iter # Variance covariance matrix (now is not empty) (Sigma2 <- khaario$Sigma) # How different are these? Sigma1 - Sigma2
Things have changed since the last time we used the kernel, as expected. Kernel
objects in the fmcmc
package can also be used with multiple chains and in
parallel. The MCMC
function is smart enough to create independent copies of
fmcmc_kernel
objects when running multiple chains, and keep the original
kernel objects up-to-date even when using multiple cores to run MCMC
. For
more technical details on how fmcmc_kernel
objects work see the manual
?fmcmc_kernel
or the vignette "User-defined kernels" included in the package
vignette("user-defined-kernels", package = "fmcmc")
.
In some situations, you may want to access the computed unnormalized log-posterior
probabilities, the states proposed by the kernel, or other process components.
In those cases, the functions with the prefix get_*
can help you.
Starting version 0.5-0, we replaced the family of functions last_*
with
get_*
; a re-design of this "memory" component that gives users access
to data generated during the Markov process. After each run of the MCMC
function,
information regarding the last execution is stored in the environment
MCMC_OUTPUT
.
If you wanted to look at the logposterior of the last call and proposed states, you can do the following:
plot(get_logpost(), type="l") # Pretty figure showing proposed and accepted plot( get_draws()[,1:2], pch = 20, col = "gray", main = "Haario's second run" ) points(out_haario_2[,1:2], col = "red", pch = 20) legend( "topleft", legend = c("proposed", "accepted"), col = c("gray", "red"), pch = 20, bty = "n" )
The MCMC_OUTPUT
environment also contains the arguments passed to MCMC()
:
get_initial() get_fun() get_kernel()
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