CMA (version 1.30.0)

pls_rfCMA: Partial Least Squares followed by random forests

Description

This method constructs a classifier that extracts Partial Least Squares components used to generate Random Forests, s. rfCMA.

For S4 method information, see pls_rfCMA-methods.

Usage

pls_rfCMA(X, y, f, learnind, comp = 2 * nlevels(as.factor(y)), seed = 111,models=FALSE, ...)

Arguments

X
Gene expression data. Can be one of the following:
  • A matrix. Rows correspond to observations, columns to variables.
  • A data.frame, when f is not missing (s. below).
  • An object of class ExpressionSet.

y
Class labels. Can be one of the following:
  • A numeric vector.
  • A factor.
  • A character if X is an ExpressionSet that specifies the phenotype variable.
  • missing, if X is a data.frame and a proper formula f is provided.

WARNING: The class labels will be re-coded to range from 0 to K-1, where K is the total number of different classes in the learning set.

f
A two-sided formula, if X is a data.frame. The left part correspond to class labels, the right to variables.
learnind
An index vector specifying the observations that belong to the learning set. May be missing; in that case, the learning set consists of all observations and predictions are made on the learning set.
comp
Number of Partial Least Squares components to extract. Default ist two times the number of different classes.
seed
Fix Random number generator seed to seed. This is useful to guarantee reproducibility of the results, due to the random component in the random Forest.
models
a logical value indicating whether the model object shall be returned
...
Further arguments to be passed to randomForests from the package of the same name.

Value

cloutput.

References

Boulesteix, A.L., Strimmer, K. (2007).

Partial least squares: a versatile tool for the analysis of high-dimensional genomic data.

Briefings in Bioinformatics 7:32-44.

See Also

compBoostCMA, dldaCMA, ElasticNetCMA, fdaCMA, flexdaCMA, gbmCMA, knnCMA, ldaCMA, LassoCMA, nnetCMA, pknnCMA, plrCMA, pls_ldaCMA, pls_lrCMA, pnnCMA, qdaCMA, rfCMA, scdaCMA, shrinkldaCMA, svmCMA

Examples

Run this code
### load Golub AML/ALL data
data(golub)
### extract class labels
golubY <- golub[,1]
### extract gene expression
golubX <- as.matrix(golub[,-1])
### select learningset
ratio <- 2/3
set.seed(111)
learnind <- sample(length(golubY), size=floor(ratio*length(golubY)))
### run PLS, combined with Random Forest
#result <- pls_rfCMA(X=golubX, y=golubY, learnind=learnind)
### show results
#show(result)
#ftable(result)
#plot(result)

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