simulateLatinsquare.fnc: Simulate simple Latin Square data and compare models
Description
This function creates a user-specified number of simulated
datasets with a Latin Square design, and compares mixed-effects
models with the by-subject anova.
Usage
simulateLatinsquare.fnc(dat, with = TRUE, trial = 0, nruns = 100,
nsub = NA, nitem = NA, ...)
Arguments
dat
A data frame with the structure of the data set latinsquare
.
with
Logical, if TRUE, effect of SOA built into the data.
trial
A number which, if nonzero, gives the magnitude of a
learning or a fatigue effect.
nruns
A number indicating the required number of simulation runs.
nsub
A number for the number of subjects.
nitem
A number for the number of items.
...
other parameters to be passed through to plotting functions.
Value
A list with components
alpha05Description of 'comp1'
alpha01proportion of runs in which predictors are significant at the
05 significance level.
resData frame with simulation results.
withLogical, TRUE if SOA effect is built into the simulations.
Examples
Run this code# NOT RUN {
data(latinsquare)
\dontrun{
library(lme4)
simulateLatinsquare.fnc(latinsquare, nruns=100)
}
# }
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