| predict.inclass {ipred} | R Documentation |
Predictions from an Inclass Object
Description
Predicts the class membership of new observations through indirect classification.
Usage
## S3 method for class 'inclass'
predict(object, newdata, ...)
Arguments
object |
object of class |
newdata |
data frame to be classified. |
... |
additional arguments corresponding to the predictive models
specified in |
Details
Predictions of class memberships are calculated. i.e. values of the
intermediate variables are predicted and classified following cFUN,
see inclass.
Value
The vector of predicted classes is returned.
References
David J. Hand, Hua Gui Li, Niall M. Adams (2001), Supervised classification with structured class definitions. Computational Statistics & Data Analysis 36, 209–225.
Andrea Peters, Berthold Lausen, Georg Michelson and Olaf Gefeller (2003), Diagnosis of glaucoma by indirect classifiers. Methods of Information in Medicine 1, 99-103.
See Also
Examples
## Not run:
# Simulation model, classification rule following Hand et al. (2001)
theta90 <- varset(N = 1000, sigma = 0.1, theta = 90, threshold = 0)
dataset <- as.data.frame(cbind(theta90$explanatory, theta90$intermediate))
names(dataset) <- c(colnames(theta90$explanatory),
colnames(theta90$intermediate))
classify <- function(Y, threshold = 0) {
Y <- Y[,c("y1", "y2")]
z <- (Y > threshold)
resp <- as.factor(ifelse((z[,1] + z[,2]) > 1, 1, 0))
return(resp)
}
formula <- response~y1+y2~x1+x2
fit <- inclass(formula, data = dataset, pFUN = list(list(model = lm)),
cFUN = classify)
predict(object = fit, newdata = dataset)
data("Smoking", package = "ipred")
# explanatory variables are: TarY, NicY, COY, Sex, Age
# intermediate variables are: TVPS, BPNL, COHB
# reponse is defined by:
classify <- function(data){
data <- data[,c("TVPS", "BPNL", "COHB")]
res <- t(t(data) > c(4438, 232.5, 58))
res <- as.factor(ifelse(apply(res, 1, sum) > 2, 1, 0))
res
}
response <- classify(Smoking[ ,c("TVPS", "BPNL", "COHB")])
smoking <- cbind(Smoking, response)
formula <- response~TVPS+BPNL+COHB~TarY+NicY+COY+Sex+Age
fit <- inclass(formula, data = smoking,
pFUN = list(list(model = lm)), cFUN = classify)
predict(object = fit, newdata = smoking)
## End(Not run)
data("GlaucomaMVF", package = "ipred")
library("rpart")
glaucoma <- GlaucomaMVF[,(names(GlaucomaMVF) != "tension")]
# explanatory variables are derived by laser scanning image and intra occular pressure
# intermediate variables are: clv, cs, lora
# response is defined by
classify <- function (data) {
attach(data)
res <- ifelse((!is.na(clv) & !is.na(lora) & clv >= 5.1 & lora >=
49.23372) | (!is.na(clv) & !is.na(lora) & !is.na(cs) &
clv < 5.1 & lora >= 58.55409 & cs < 1.405) | (is.na(clv) &
!is.na(lora) & !is.na(cs) & lora >= 58.55409 & cs < 1.405) |
(!is.na(clv) & is.na(lora) & cs < 1.405), 0, 1)
detach(data)
factor (res, labels = c("glaucoma", "normal"))
}
fit <- inclass(Class~clv+lora+cs~., data = glaucoma,
pFUN = list(list(model = rpart)), cFUN = classify)
data("GlaucomaM", package = "TH.data")
predict(object = fit, newdata = GlaucomaM)