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Makes a basic cross-classified design with random intercepts for subjects and items. See vignette("sim_mixed", package = "faux") for examples and details.
vignette("sim_mixed", package = "faux")
sim_mixed_cc( sub_n = 100, item_n = 20, grand_i = 0, sub_sd = 1, item_sd = 1, error_sd = 1, empirical = FALSE, seed = NULL )
a tbl
the number of subjects
the number of items
the grand intercept (overall mean)
the SD of subject random intercepts (or a sub_n-length named vector of random intercepts for each subject)
the SD of item random intercepts (or an item_n-length named vector of random intercepts for each item)
the SD of the error term
Should the returned data have these exact parameters? (versus be sampled from a population with these parameters)
DEPRECATED use set.seed() instead before running this function
sim_mixed_cc(10, 10)
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