Nothing
at_home <- identical( Sys.getenv("AT_HOME"), "TRUE" )
set.seed(123)
data(longley)
data <- list(gnp=longley$GNP, employed=longley$Employed, n=nrow(longley))
modfile <- tempfile()
writeLines("
model{
for (i in 1:n){
employed[i] ~ dnorm(mu[i], tau)
mu[i] <- alpha + beta*gnp[i]
}
alpha ~ dnorm(0, 0.00001)
beta ~ dnorm(0, 0.00001)
sigma ~ dunif(0,1000)
tau <- pow(sigma,-2)
}", con=modfile)
inits <- function(){
list(alpha=rnorm(1,0,1),beta=rnorm(1,0,1),sigma=runif(1,0,3))
}
params <- c('alpha','beta','sigma', 'mu')
out <- jags(data = data, inits = inits, parameters.to.save = params,
model.file = modfile, n.chains = 3, n.adapt = 100, n.iter = 100,
n.burnin = 50, n.thin = 2, verbose=FALSE)
out2 <- update(out, n.iter=100, n.thin=2, verbose=FALSE)
ref <- readRDS("update_ref.Rds")
expect_equal(out2$mcmc.info$n.iter, 200)
expect_equal(out2$mcmc.info$n.samples, 150)
expect_equal(nrow(out2$samples[[1]]), 50)
# Remove time/date based elements
if(at_home){
out2$mcmc.info$elapsed.mins <- ref$mcmc.inf$elapsed.mins
expect_equal(out2[-c(17,19,21)], ref[-c(17,19,21)])
}
# codaOnly---------------------------------------------------------------------
out2 <- update(out, n.iter=100, n.thin=2, verbose=FALSE, codaOnly='mu')
if(at_home){
ref <- readRDS("update_ref_codaonly.Rds")
out2$mcmc.info$elapsed.mins <- ref$mcmc.inf$elapsed.mins
expect_equal(out2[-c(17,19,21)], ref[-c(17,19,21)])
}
# Different saved parameters---------------------------------------------------
out2 <- update(out, n.iter=100, n.thin=2, verbose=FALSE,
parameters.to.save=c('beta', 'alpha'))
if(at_home){
ref <- readRDS("update_ref_diffsaved.Rds")
out2$mcmc.info$elapsed.mins <- ref$mcmc.inf$elapsed.mins
expect_equal(out2[-c(17,19,21)], ref[-c(17,19,21)])
}
# DIC = FALSE------------------------------------------------------------------
out2 <- update(out, n.iter=100, n.thin=2, verbose=FALSE,
parameters.to.save=c('alpha'), DIC=FALSE)
expect_false(out2$calc.DIC)
if(at_home){
ref <- readRDS("update_ref_noDIC.Rds")
out2$mcmc.info$elapsed.mins <- ref$mcmc.inf$elapsed.mins
expect_equal(out2[-c(15,17,19)], ref[-c(15,17,19)])
}
# Check recovery after process_output errors-----------------------------------
# Setting DIC to -999 forces process_output to error for testing
expect_message(out2 <- update(out, n.iter=100, n.thin=2, verbose=FALSE,
parameters.to.save=c('alpha'), DIC=-999))
expect_inherits(out2, "jagsUIbasic")
expect_equal(coda::varnames(out2$samples), c("alpha","deviance"))
expect_equal(names(out2), c("samples", "model"))
# Parallel---------------------------------------------------------------------
if(parallel::detectCores() > 1 & at_home){
set.seed(123)
out <- jags(data = data, inits = inits, parameters.to.save = params,
model.file = modfile, n.chains = 3, n.adapt = 100, n.iter = 100,
n.burnin = 50, n.thin = 2, verbose=FALSE, parallel=TRUE)
out2 <- update(out, n.iter=100, n.thin=2, verbose=FALSE)
ref <- readRDS("update_ref.Rds")
ref$parallel <- TRUE
out2$mcmc.info$n.cores <- NULL
ref$mcmc.info$sufficient.adapt <- out2$mcmc.info$sufficient.adapt
ref$mcmc.info$n.adapt <- out2$mcmc.info$n.adapt
out2$mcmc.info$elapsed.mins <- ref$mcmc.inf$elapsed.mins
expect_equal(out2[-c(17,19,21)], ref[-c(17,19,21)])
}
Any scripts or data that you put into this service are public.
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.