mxFitFunctionWLS {OpenMx} | R Documentation |
This function creates a new MxFitFunctionWLS object.
mxFitFunctionWLS(weights = "ULS")
weights |
Ignored. Uses weights from mxData |
Fit functions are functions for which free parameter values are optimized such that the value of a cost function is minimized. The mxFitFunctionWLS function computes the weighted least squares difference between the data and the model-implied expectations for the data based on the free parameters and the expectation function (e.g., mxExpectationNormal or mxExpectationRAM) selected for the model.
The 'weights' argument is ignored. Rather the weights are provided in the mxData object, often generated by the mxDataWLS function.
Usage Notes:
The results of the optimization can be reported using the summary function, or accessed directly in the 'output' slot of the resulting model (i.e., modelName$output). Components of the output may be referenced using the Extract functionality.
Returns a new MxFitFunctionWLS object. One and only one MxFitFunctionWLS object should be included in each model along with an associated mxExpectationNormal or mxExpectationRAM object.
The OpenMx User's guide can be found at http://openmx.psyc.virginia.edu/documentation.
Other fit functions:
mxFitFunctionMultigroup
, mxFitFunctionML
,
mxFitFunctionAlgebra
,
mxFitFunctionGREML
, mxFitFunctionR
,
mxFitFunctionRow
More information about the OpenMx package may be found here.
# Create and fit a model using mxMatrix, mxAlgebra, mxExpectationNormal, and mxFitFunctionWLS library(OpenMx) # Simulate some data x=rnorm(1000, mean=0, sd=1) y= 0.5*x + rnorm(1000, mean=0, sd=1) tmpFrame <- data.frame(x, y) tmpNames <- names(tmpFrame) wdata <- mxDataWLS(tmpFrame) # Define the matrices S <- mxMatrix(type = "Full", nrow = 2, ncol = 2, values=c(1,0,0,1), free=c(TRUE,FALSE,FALSE,TRUE), labels=c("Vx", NA, NA, "Vy"), name = "S") A <- mxMatrix(type = "Full", nrow = 2, ncol = 2, values=c(0,1,0,0), free=c(FALSE,TRUE,FALSE,FALSE), labels=c(NA, "b", NA, NA), name = "A") I <- mxMatrix(type="Iden", nrow=2, ncol=2, name="I") # Define the expectation expCov <- mxAlgebra(solve(I-A) %*% S %*% t(solve(I-A)), name="expCov") expFunction <- mxExpectationNormal(covariance="expCov", dimnames=tmpNames) # Choose a fit function fitFunction <- mxFitFunctionWLS() # Define the model tmpModel <- mxModel(model="exampleModel", S, A, I, expCov, expFunction, fitFunction, wdata) # Fit the model and print a summary tmpModelOut <- mxRun(tmpModel) summary(tmpModelOut)