Copyright © 2007-2024 The OpenMx Project
Wiki home page [1]Ideas and example functions that extend OpenMx, encapsulate tedious work, and make scripts easier to write or more compact.
You will probably define helper functions, especially for summarising the output of model you use frequently.
There are libraries of helpers that work with OpenMx including
Some how-to helpers are listed here:
source [2]
readLowerTriangle <- function(file, nrows, fill=TRUE) { xvector <- scan(file) X <- matrix(NA, nrows, nrows) i <- 1 for(row in 1:nrows) { for(col in 1:nrows) { if(col>row) next X[row,col] <- xvector[i] i <- i + 1 if (fill) X[col,row] <- X[row,col] } } return(X) }
An alternative using matrix indexing would be:
read.lower.triangle <- function(file, nrows) { X <- matrix(NA, ncol=nrows, nrow=nrows) X[upper.tri(X, diag=TRUE)] <- scan(file) X[lower.tri(X, diag=FALSE)] <- t(X)[lower.tri(X, diag=FALSE)] return(X) }
See also read.moments() in http://cran.r-project.org/web/packages/sem/sem.pdf
require(sem) # install.packages("sem", dep=T)
read.moments(file = "", diag = TRUE,
names = as.character(paste("X", 1:n, sep = "")))
If you are reanalysing published data, you may only have a correlation matrix and the SD for each variable. You can upconvert this to a covariance matrix with cor2cov(matrix, sd) from the MBESS package
http://rss.acs.unt.edu/Rdoc/library/MBESS/html/cor2cov.html