simulateddata {CalibrationCurves} | R Documentation |
Simulated data sets to illustrate the package functionality
Description
Both the traindata
and testdata
dataframe are synthetically generated data sets to illustrate the functionality of the package. The traindata
has 1000 observations and the testdata
has 500 observations. The same settings were used to generate both data sets.
Usage
data(traindata)
data(testdata)
Format
y
the binary outcome variable
x1
covariate 1
x2
covariate 2
x3
covariate 3
x4
covariate 4
Details
See the examples for how the data sets were generated.
Examples
# The data sets were generated as follows
set.seed(1782)
# Simulate training data
nTrain = 1000
B = c(0.1, 0.5, 1.2, -0.75, 0.8)
X = replicate(4, rnorm(nTrain))
p0true = binomial()$linkinv(cbind(1, X) %*% B)
y = rbinom(nTrain, 1, p0true)
colnames(X) = paste0("x", seq_len(ncol(X)))
traindata = data.frame(y, X)
# Simulate validation data
nTest = 500
X = replicate(4, rnorm(nTest))
p0true = binomial()$linkinv(cbind(1, X) %*% B)
y = rbinom(nTest, 1, p0true)
colnames(X) = paste0("x", seq_len(ncol(X)))
testdata = data.frame(y, X)
[Package CalibrationCurves version 2.0.3 Index]