SimCollect | R Documentation |
This function collects and aggregates the results from
SimDesign
's runSimulation
into a single
objects suitable for post-analyses, or combines all the saved results directories and combines
them into one. This is useful when results are run piece-wise on one node (e.g., 500 replications
in one batch, 500 again at a later date, though be careful about the set.seed
use as the random numbers will tend to correlate the more it is used) or run independently across different
nodes/computing cores (e.g., see runArraySimulation
.
SimCollect(
dir = NULL,
files = NULL,
filename = NULL,
select = NULL,
check.only = FALSE,
target.reps = NULL,
warning_details = FALSE,
error_details = TRUE
)
aggregate_simulations(...)
dir |
a |
files |
a |
filename |
(optional) name of .rds file to save aggregate simulation file to. If not specified then the results will only be returned in the R console. |
select |
a character vector indicating columns to variables to select from the
|
check.only |
logical; for larger simulations file sets, such as those generated by
|
target.reps |
(optional) number of replications to check against to evaluate whether the simulation files returned the desired number of replications. If missing, the highest detected value from the collected set of replication information will be used |
warning_details |
logical; include the aggregate of the warnings to be extracted via
|
error_details |
logical; include the aggregate of the errors to be extracted via
|
... |
not used |
returns a data.frame/tibble
with the (weighted) average/aggregate
of the simulation results
Phil Chalmers rphilip.chalmers@gmail.com
Chalmers, R. P., & Adkins, M. C. (2020). Writing Effective and Reliable Monte Carlo Simulations
with the SimDesign Package. The Quantitative Methods for Psychology, 16
(4), 248-280.
\Sexpr[results=rd]{tools:::Rd_expr_doi("10.20982/tqmp.16.4.p248")}
Sigal, M. J., & Chalmers, R. P. (2016). Play it again: Teaching statistics with Monte
Carlo simulation. Journal of Statistics Education, 24
(3), 136-156.
\Sexpr[results=rd]{tools:::Rd_expr_doi("10.1080/10691898.2016.1246953")}
runSimulation
, runArraySimulation
,
SimCheck
## Not run:
setwd('my_working_directory')
## run simulations to save the .rds files (or move them to the working directory)
# seeds1 <- genSeeds(design)
# seeds2 <- genSeeds(design, old.seeds=seeds1)
# ret1 <- runSimulation(design, ..., seed=seeds1, filename='file1')
# ret2 <- runSimulation(design, ..., seed=seeds2, filename='file2')
# saves to the hard-drive and stores in workspace
final <- SimCollect(files = c('file1.rds', 'file2.rds'))
final
# If filename not included, can be extracted from results
# files <- c(SimExtract(ret1, 'filename'), SimExtract(ret2, 'filename'))
# final <- SimCollect(files = files)
#################################################
# Example where each row condition is repeated, evaluated independently,
# and later collapsed into a single analysis object
# Each condition repeated four times (hence, replications
# should be set to desired.reps/4)
Design <- createDesign(mu = c(0,5),
N = c(30, 60))
Design
# assume the N=60 takes longer, and should be spread out across more arrays
Design_long <- expandDesign(Design, c(2,2,4,4))
Design_long
replications <- c(rep(50, 4), rep(25,8))
data.frame(Design_long, replications)
#-------------------------------------------------------------------
Generate <- function(condition, fixed_objects) {
dat <- with(condition, rnorm(N, mean=mu))
dat
}
Analyse <- function(condition, dat, fixed_objects) {
ret <- c(mean=mean(dat), SD=sd(dat))
ret
}
Summarise <- function(condition, results, fixed_objects) {
ret <- colMeans(results)
ret
}
#-------------------------------------------------------------------
# create directory to store all final simulation files
dir.create('sim_files/')
iseed <- genSeeds()
# distribute jobs independently
sapply(1:nrow(Design_long), \(i) {
runArraySimulation(design=Design_long, replications=replications,
generate=Generate, analyse=Analyse, summarise=Summarise,
arrayID=i, dirname='sim_files/', filename='job', iseed=iseed)
}) |> invisible()
# check that all replications satisfy target
SimCollect('sim_files/', check.only = TRUE)
# this would have been returned were the target.rep supposed to be 1000
SimCollect('sim_files/', check.only = TRUE, target.reps=1000)
# aggregate into single object
sim <- SimCollect('sim_files/')
sim
SimClean(dir='sim_files/')
## End(Not run)
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.