superpc (version 1.09)

superpc.predictionplot: Plot outcome predictions from superpc

Description

Plots outcome predictions from superpc

Usage

superpc.predictionplot(train.obj, data, data.test,  threshold, n.components=3,
  n.class=2, shrinkage=NULL,  call.win.metafile=FALSE)

Arguments

train.obj
Object returned by superpc.train
data
List of training data, of form described in superpc.train documen tation,
data.test
List of test data; same form as training data
threshold
Threshold for scores: features with abs(score)>threshold are retained.
n.components
Number of principal components to compute. Should be 1,2 or 3.
n.class
Number of classes for survival stratification. Onply applicable for survival data. Default 2.
shrinkage
Shrinkage to be applied to feature loadings. Default is NULL meaning no shrinkage
call.win.metafile
Used only by Excel interface call to function

Examples

Run this code
set.seed(332)
x<-matrix(rnorm(1000*40),ncol=40)
y<-10+svd(x[1:60,])$v[,1]+ .1*rnorm(40)
censoring.status<- sample(c(rep(1,30),rep(0,10)))

featurenames <- paste("feature",as.character(1:1000),sep="")
data<-list(x=x,y=y, censoring.status=censoring.status, featurenames=featurenames)


a<- superpc.train(data, type="survival")

superpc.predictionplot(a,data,data,threshold=1)

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