test_mloef | R Documentation |
runs Martin-Loef Test using the MLoef() function of eRm.
test_mloef(
items = NULL,
dset = NULL,
na.rm = TRUE,
model = NULL,
p.par = NULL,
modelType = NULL,
splitcr = "median",
alpha = 0.1,
estimation_param = NULL
)
items |
a numeric vector containing the index numbers of the items in dset that are used to fit the model |
dset |
a data.frame containing the data |
na.rm |
a boolean value. If TRUE, all cases with any NA are removed (na.omit). If FALSE, only cases with full NA responses are removed |
model |
on object of a fit Rasch model, estimated with the packages 'eRm' (classes 'RM', 'PCM' or 'RSM'), 'psychotools' (classes raschmodel, 'pcmodel' or 'rsmodel') or 'pairwise' (class 'pers'), matching the value of modelType. If 'model' is provided, this model is used. If NULL, a model is fit using 'dset' and 'items'. |
p.par |
a person parameter object matching the class of 'model'. If NULL, the person parameters will be estimated. |
modelType |
a character value defining the rasch model to fit. Possible values: "RM", "PCM", "RSM". |
splitcr |
as defined by eRm::MLoef: Split criterion to define the item groups. "median" and "mean" split items in two groups based on their items' raw scores. splitcr can also be a vector of length k (where k denotes the number of items) that takes two or more distinct values to define groups used for the Martin-Löf Test. |
alpha |
a numeric value for the alpha level. Will be ignored if use.pval is FALSE |
estimation_param |
options for parameter estimation using estimation_control |
if the p-value of the test is not significant, a list containing 3 elements is returned: the item combination that was tested, a list of the class the model was estimated with (depending on modelType and estimation_param$est) with the fit model and a list with a person parameter object (depending on estimation_param$est). If the test is significant, NULL is returned.
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