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SimDesign (version 2.9)

Structure for Organizing Monte Carlo Simulation Designs

Description

Provides tools to safely and efficiently organize and execute Monte Carlo simulation experiments in R. The package controls the structure and back-end of Monte Carlo simulation experiments by utilizing a generate-analyse-summarise workflow. The workflow safeguards against common simulation coding issues, such as automatically re-simulating non-convergent results, prevents inadvertently overwriting simulation files, catches error and warning messages during execution, and implicitly supports parallel processing. For a pedagogical introduction to the package see Sigal and Chalmers (2016) . For a more in-depth overview of the package and its design philosophy see Chalmers and Adkins (2020) .

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Install

install.packages('SimDesign')

Monthly Downloads

6,019

Version

2.9

License

GPL (>= 2)

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Maintainer

Phil Chalmers

Last Published

August 9th, 2022

Functions in SimDesign (2.9)

CC

Compute congruence coefficient
Generate

Generate data
AnalyseIf

Perform a test that indicates whether a given Analyse() function should be executed
Attach

Attach objects for easier reference
EDR

Compute the empirical detection rate for Type I errors and Power
ECR

Compute empirical coverage rates
IRMSE

Compute the integrated root mean-square error
Analyse

Compute estimates and statistics
BF_sim_alternative

(Alternative) Example simulation from Brown and Forsythe (1974)
BF_sim

Example simulation from Brown and Forsythe (1974)
SimAnova

Function for decomposing the simulation into ANOVA-based effect sizes
RAB

Compute the relative absolute bias of multiple estimators
RD

Compute the relative difference
RE

Compute the relative efficiency of multiple estimators
RSE

Compute the relative standard error ratio
Serlin2000

Empirical detection robustness method suggested by Serlin (2000)
aggregate_simulations

Collapse separate simulation files into a single result
bias

Compute (relative/standardized) bias summary statistic
Summarise

Summarise simulated data using various population comparison statistics
SimCheck

Check the status of the simulation's temporary results
add_missing

Add missing values to a vector given a MCAR, MAR, or MNAR scheme
SimClean

Removes/cleans files and folders that have been saved
MAE

Compute the mean absolute error
SimDesign

Structure for Organizing Monte Carlo Simulation Designs
boot_predict

Compute prediction estimates for the replication size using bootstrap MSE estimates
rbind.SimDesign

Combine two separate SimDesign objects by row
rValeMaurelli

Generate non-normal data with Vale & Maurelli's (1983) method
RMSE

Compute the (normalized) root mean square error
rHeadrick

Generate non-normal data with Headrick's (2002) method
quiet

Suppress function messages and Concatenate and Print (cat)
reSummarise

Run a summarise step for results that have been saved to the hard drive
SimResults

Function to read in saved simulation results
MSRSE

Compute the relative performance behavior of collections of standard errors
rejectionSampling

Rejection sampling (i.e., accept-reject method)
runSimulation

Run a Monte Carlo simulation given a data.frame of conditions and simulation functions
rint

Generate integer values within specified range
SimShiny

Generate a basic Monte Carlo simulation GUI template
rinvWishart

Generate data with the inverse Wishart distribution
rtruncate

Generate a random set of values within a truncated range
rmvt

Generate data with the multivariate t distribution
createDesign

Create the simulation Design object
SimExtract

Function to extract extra information from SimDesign objects
SimFunctions

Template-based generation of the Generate-Analyse-Summarise functions
rmvnorm

Generate data with the multivariate normal (i.e., Gaussian) distribution
rmgh

Generate data with the multivariate g-and-h distribution