userfriendlyscience (version 0.5-2)

scaleDiagnosis: scaleDiagnosis

Description

scaleDiagnosis provides a number of diagnostics for a scale (an aggregative measure consisting of several items).

Usage

scaleDiagnosis(dat=NULL, items=NULL, plotSize=180, sizeMultiplier = 1, axisLabels = "none", scaleReliability.ci=FALSE, conf.level=.95, powerHist=TRUE, ...)

Arguments

dat
A dataframe containing the items in the scale. All variables in this dataframe will be used if items is NULL.
items
If not NULL, this should be a character vector with the names of the variables in the dataframe that represent items in the scale.
plotSize
Size of the final plot in millimeters.
sizeMultiplier
Allows more flexible control over the size of the plot elements
axisLabels
Passed to ggpairs function to set axisLabels.
scaleReliability.ci
TRUE or FALSE: whether to compute confidence intervals for Cronbach's Alpha and Omega (uses bootstrapping function in MBESS, takes a while).
conf.level
Confidence of confidence intervals for reliability estimates (if requested with scaleReliability.ci).
powerHist
Whether to use the default ggpairs histogram on the diagonal of the scattermatrix, or whether to use the powerHist version.
...
Additional arguments are passed on to powerHist.

Value

An object with the input and several output variables. Most notably:

Details

Function to generate an object with several useful statistics and a plot to assess how the elements (usually items) in a scale relate to each other, such as Cronbach's Alpha, omega, the Greatest Lower Bound, a factor analysis, and a correlation matrix.

Examples

Run this code
### Note: the 'not run' is simply because running takes a lot of time,
###       but these examples are all safe to run!
## Not run: 
# ### This will prompt the user to select an SPSS file
# scaleDiagnosis();
# 
# ### Generate a datafile to use
# exampleData <- data.frame(item1=rnorm(100));
# exampleData$item2 <- exampleData$item1+rnorm(100);
# exampleData$item3 <- exampleData$item1+rnorm(100);
# exampleData$item4 <- exampleData$item2+rnorm(100);
# exampleData$item5 <- exampleData$item2+rnorm(100);
# 
# ### Use a selection of two variables
# scaleDiagnosis(dat=exampleData, items=c('item2', 'item4'));
# 
# ### Use all items
# scaleDiagnosis(dat=exampleData);
# ## End(Not run)

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