correct.cor {psych} | R Documentation |
Find dis-attenuated correlations given correlations and reliabilities
Description
Given a raw correlation matrix and a vector of reliabilities, report the disattenuated correlations above the diagonal.
Usage
correct.cor(x, y)
Arguments
x |
A raw correlation matrix |
y |
Vector of reliabilities |
Details
Disattenuated correlations may be thought of as correlations between the latent variables measured by a set of observed variables. That is, what would the correlation be between two (unreliable) variables be if both variables were measured perfectly reliably.
This function is mainly used if importing correlations and reliabilities from somewhere else. If the raw data are available, use score.items
, or cluster.loadings
or cluster.cor
.
Examples of the output of this function are seen in cluster.loadings
and cluster.cor
Value
Raw correlations below the diagonal, reliabilities on the diagonal, disattenuated above the diagonal.
Author(s)
Maintainer: William Revelle revelle@northwestern.edu
References
Revelle, W. (in preparation) An Introduction to Psychometric Theory with applications in R. Springer. at https://personality-project.org/r/book/
See Also
cluster.loadings
and cluster.cor
Examples
# attitude from the datasets package
#example 1 is a rather clunky way of doing things
a1 <- attitude[,c(1:3)]
a2 <- attitude[,c(4:7)]
x1 <- rowSums(a1) #find the sum of the first 3 attitudes
x2 <- rowSums(a2) #find the sum of the last 4 attitudes
alpha1 <- alpha(a1)
alpha2 <- alpha(a2)
x <- matrix(c(x1,x2),ncol=2)
x.cor <- cor(x)
alpha <- c(alpha1$total$raw_alpha,alpha2$total$raw_alpha)
round(correct.cor(x.cor,alpha),2)
#
#much better - although uses standardized alpha
clusters <- matrix(c(rep(1,3),rep(0,7),rep(1,4)),ncol=2)
cluster.loadings(clusters,cor(attitude))
# or
clusters <- matrix(c(rep(1,3),rep(0,7),rep(1,4)),ncol=2)
cluster.cor(clusters,cor(attitude))
#
#best
keys <- make.keys(attitude,list(first=1:3,second=4:7))
scores <- scoreItems(keys,attitude)
scores$corrected
#However, to do the more general case of correcting correlations for reliabilty
#corrected <- cor2cov(x.cor,1/alpha)
#diag(corrected) <- 1