#
# Copyright 2007-2018 by the individuals mentioned in the source code history
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
require(OpenMx)
v <- 1:3
omxCheckError(mxFactor(v, levels=1:3, exclude=3), "Factor levels and exclude vector are not disjoint; both contain '3'")
v <- 1:4
omxCheckError(mxFactor(v, levels=1:3), "The following values are not mapped to factor levels and not excluded: '4'")
cf <- omxCheckError(mxFactor(sample(1:2, 10, replace=TRUE), levels=1:2,
labels=c("incorrect", "incorrect")),
"Duplicate labels and collapse=TRUE not specified: 'incorrect'")
cf <- mxFactor(sample(1:2, 10, replace=TRUE), levels=1:2,
labels=c("incorrect", "incorrect"), collapse=TRUE)
omxCheckEquals(length(levels(cf)), 1)
omxCheckEquals(levels(cf), 'incorrect')
omxCheckTrue(all(cf == "incorrect"))
foo <- data.frame(x=c(1:3),y=c(4:6),z=c(7:9))
foo <- mxFactor(foo, c(1:9), labels=c(1,1,1,2,2,2,3,3,3), collapse=TRUE)
omxCheckTrue(all(foo == matrix(kronecker(1:3, rep(1,3)),3,3)))
v <- sample.int(50, 200, replace=TRUE)
vl <- v %% 11
mask <- !duplicated(v)
v2 <- mxFactor(v, levels=v[mask], labels=vl[mask], collapse = TRUE)
omxCheckTrue(all(v2 == vl))
#Ordinal Data test, based on poly3dz.mx
# Data
nthresh1 <- 1
nthresh2 <- 12
cnames <- c("t1neur1", "t1mddd4l", "t2neur1", "t2mddd4l")
data <- suppressWarnings(try(read.table("data/mddndzf.dat", na.string=".", col.names=cnames)))
if (is(data, "try-error")) data <- read.table("models/passing/data/mddndzf.dat", na.string=".", col.names=cnames)
data[,c(1,3)] <- mxFactor(data[,c(1,3)], c(0 : nthresh2))
data[,c(2,4)] <- mxFactor(data[,c(2,4)], c(0 : nthresh1))
diff <- nthresh2 - nthresh1
nvar <- 4
Mx1Threshold <- rbind(
c(-1.9209, 0.3935, -1.9209, 0.3935),
c(-0.5880, 0 , -0.5880, 0 ),
c(-0.0612, 0 , -0.0612, 0 ),
c( 0.3239, 0 , 0.3239, 0 ),
c( 0.6936, 0 , 0.6936, 0 ),
c( 0.8856, 0 , 0.8856, 0 ),
c( 1.0995, 0 , 1.0995, 0 ),
c( 1.3637, 0 , 1.3637, 0 ),
c( 1.5031, 0 , 1.5031, 0 ),
c( 1.7498, 0 , 1.7498, 0 ),
c( 2.0733, 0 , 2.0733, 0 ),
c( 2.3768, 0 , 2.3768, 0 ))
Mx1R <- rbind(
c(1.0000, 0.2955, 0.1268, 0.0760),
c(0.2955, 1.0000, -0.0011, 0.1869),
c(0.1268, -0.0011, 1.0000, 0.4377),
c(0.0760, 0.1869, 0.4377, 1.0000))
nameList <- names(data)
# Define the model
model <- mxModel()
model <- mxModel(model, mxMatrix("Stand", name = "R", # values=c(.2955, .1268, -.0011, .0760, .1869, .4377),
nrow = nvar, ncol = nvar, free=TRUE))
model <- mxModel(model, mxMatrix("Zero", name = "M", nrow = 1, ncol = nvar, free=FALSE))
model <- mxModel(model, mxMatrix("Full",
name="thresh",
# values = Mx1Threshold,
values=cbind(
seq(-1.9, 1.9, length.out=nthresh2), # t1Neur1: 12 thresholds evenly spaced from -1.9 to 1.9
c(rep(1, nthresh1), rep(0, diff)), # t1mddd4l: 1 threshold at 1
seq(-1.9, 1.9, length.out=nthresh2), # t2Neur1: 12 thresholds same as t1Neur1
c(rep(1, nthresh1), rep(0, diff)) # t2mddd4l: 1 threshold same as t1mddd4l
),
free = c(rep(c( rep(TRUE, nthresh2),
rep(TRUE, nthresh1), rep(FALSE, diff)
), 2)),
labels = rep(c(paste("neur", 1:nthresh2, sep=""),
paste("mddd4l", 1:nthresh1, sep=""), rep(NA, diff))
)))
# Define the objective function
objective <- mxExpectationNormal(covariance="R", means="M", dimnames=nameList, thresholds="thresh")
# Define the observed covariance matrix
dataMatrix <- mxData(data, type='raw')
# Add the objective function and the data to the model
model <- mxModel(model, objective, dataMatrix, mxFitFunctionML())
# Run the job
modelOut <- mxRun(model)
estimates <- modelOut$output$estimate
# Results from old Mx:
omxCheckCloseEnough(mxEval(thresh, modelOut)[,1], Mx1Threshold[,1], 0.03)
omxCheckCloseEnough(mxEval(thresh, modelOut)[1,2], Mx1Threshold[1,2], 0.01)
omxCheckCloseEnough(mxEval(R, modelOut), Mx1R, 0.01)
omxCheckCloseEnough(modelOut$output$Minus2LogLikelihood, 4081.48, 0.08)
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