psych (version 1.6.12)

make.keys: Create a keys matrix for use by score.items or cluster.cor

Description

When scoring items by forming composite scales either from the raw data using score.items or from the correlation matrix using cluster.cor, it is necessary to create a keys matrix. This is just a short cut for doing so. The keys matrix is a nvar x nscales matrix of -1,0, 1 and defines the membership for each scale. Items can be specified by location or by name.

Usage

make.keys(nvars, keys.list, item.labels = NULL, key.labels = NULL) keys2list(keys,sign=TRUE)

Arguments

nvars
Number of variables items to be scored
keys.list
A list of the scoring keys,one element for each scale
item.labels
Typically, just the colnames of the items data matrix.
key.labels
Labels for the scales can be specified here, or in the key.list
keys
A keys matrix returned from make.keys
sign
if TRUE, prefix negatively keyed items with - (e.g., ``-E2")

Value

Details

There are three ways to create keys for the scoreItems, scoreOverlap, scoreIrt.1pl, or scoreIrt.2pl functions. One is to laboriously do it in a spreadsheet and then copy them into R. The other is to just specify them by item number in a list.make.keys allows one to specify items by name or by location or a mixture of both.

Since these scoring functions scoreItems, scoreOverlap, scoreIrt.1pl, or scoreIrt.2pl can now (version 1.6.9) just take a keys.list as input, make.keys is not as important, but is kept for documentation purposes.

To address items by name it is necessary to specify item names, either by using the item.labels value, or by putting the name of the data file or the colnames of the data file to be scored into the first (nvars) position.

If specifying by number (location), then nvars is the total number of items in the object to be scored, not just the number of items used.

See the examples for the various options.

Note that make.keys was revised in Sept, 2013 to allow for keying by name.

It is also possible to do several make.keys operations and then combine them using superMatrix.

keys2list reverses the make.keys process and returns a list of scoring keys with the item names for each item to be keyed. If sign=FALSE, this is just a list of the items to be scored. (Useful for scoreIrt.2pl

See Also

scoreItems, scoreOverlap, cluster.cor superMatrix

Examples

Run this code
data(attitude)  #specify the items by location
 key.list <- list(all=c(1,2,3,4,-5,6,7),
                  first=c(1,2,3),
                  last=c(4,5,6,7))
 keys <- make.keys(7,key.list,item.labels = colnames(attitude))
 keys
 #now, undo this 
new.keys.list <- keys2list(keys)  #note, these are now given the variable names

 
 #scores <- score.items(keys,attitude)
 #scores
 
 data(bfi)
 #first create the keys by location (the conventional way)
 keys.list <- list(agree=c(-1,2:5),conscientious=c(6:8,-9,-10),
 extraversion=c(-11,-12,13:15),neuroticism=c(16:20),openness = c(21,-22,23,24,-25))   
 keys <- make.keys(25,keys.list,item.labels=colnames(bfi)[1:25])
 new.keys.list <- keys2list(keys)  #these will be in the form of variable names
 
 #alternatively, create by a mixture of names and locations 
 keys.list <- list(agree=c("-A1","A2","A3","A4","A5"),
conscientious=c("C1","C2","C2","-C4","-C5"),extraversion=c("-E1","-E2","E3","E4","E5"),
neuroticism=c(16:20),openness = c(21,-22,23,24,-25)) 
keys <- make.keys(bfi,keys.list) #specify the data file to be scored (bfi)
#or
keys <- make.keys(colnames(bfi),keys.list) #specify the names of the variables to be used
#or
#specify the number of variables to be scored and their names in all cases
keys <- make.keys(28,keys.list,colnames(bfi)) 


 scores <- scoreItems(keys,bfi)
 summary(scores)

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