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eRm (version 0.15-5)

plotDIF: Confidence intervals plot of item parameter estimates.

Description

Performs an plot of item parameter conficence intervals based on LRtest subgroup splitting.

Usage

plotDIF(object, item.subset = NULL, gamma = 0.95, main = NULL,
          xlim = NULL,  xlab = " ", ylab=" ", col = NULL,
          distance, splitnames=NULL, leg = FALSE, legpos="bottomleft", ...)

Arguments

object
An object of class LR (if more objects should be plotted, the argument has to be defined as a list).
item.subset
Subset of items to be plotted. Either a numeric vector indicating the items or a character vector indicating the itemnames. If nothing is defined (default), all items are plotted.
gamma
The level for the item parameter's confidence limits (default is gamma = 0.95).
main
Main title for the plot.
xlim
Numeric vector of length 2, giving the x coordinates ranges of the plot (the y coordinates depend on the number of depicted items).
xlab
Label for the x axis.
ylab
Label for the y axis.
col
By default the color for the drawn confidence lines is determined automatically whereas every group (split criterion) is depicted in the same color.
distance
Distance between each item's confidence lines -- if omitted, the distance shrinks with increasing numbers of split criteria. Can be overriden using values in (0, 0.5).
splitnames
For labeling the splitobjects in the legend (returns a nicer output).
leg
If TRUE a legend is provided by default.
legpos
Position of the legend with possible values "bottomright", "bottom", "bottomleft", "left", "topleft", "top", "topright", "right" and "center"
...
Further options to be passed to plot.

Value

  • plotCI returns a list containing the confidence limits of each group in each LRtest object.

encoding

UTF-8

Details

If there are items that cannot be estimated for some reasons, certainly these ones are not plotted. For plotting several objects of class LR, the subgroup splitting by LRtest has to be carried out for the same data set (or at least item subsets of it). Plotting a certain subset of items could be useful if the objects of class LR contain a huge number of estimated items. The default level for the conficence limits is gamma = 0.95. (If the conficence limits should be corrected it is useful to use a correction, e.g., Bonferroni: 1 - (1 - gamma) / number of estimated items.)

See Also

LRtest, confint.threshold, thresholds

Examples

Run this code
# the object used is the result of running   RM(raschdat1)
res <- raschdat1_RM_fitted     # see ? raschdat1_RM_fitted

# LR-test on dichotomous Rasch model with user-defined split
splitvec <- rep(1:2, each = 50)
lrres <- LRtest(res, splitcr = splitvec)

# LR-test with mean split
lrres2 <- LRtest(res, split = "mean")

# combination of LRtest-objects in a list
RMplotCI <- list(lrres, lrres2)

# the object raschdat1_RM_plotDIF is the result of the computations outlined
# above and is loaded to save computation time. see ?raschdat1_RM_plotDIF
RMplotCI <- raschdat1_RM_plotDIF

# Confidence intervals plot with default assumptions
plotDIF(RMplotCI)

# Confidence intervals plot with Bonferroni correction
plotDIF(RMplotCI, gamma = (1 - (0.05/10)))

# Confidence intervals plot for an item subset
plotDIF(RMplotCI, item.subset = 1:6)

# with user defined group color and legend
plotDIF(RMplotCI, col = c("red", "blue"), leg = TRUE, legpos = "bottomright")

# with names for the splitobjects
plotDIF(RMplotCI, col = c("red", "blue"), leg = TRUE, legpos = "bottomright",
        splitnames = c(paste("User", 1:2), paste(rep("Mean", 2), 1:2)))

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