\name{pls_rfCMA} \alias{pls_rfCMA} \title{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. \code{\link{rfCMA}}. For \code{S4} method information, see \code{\link{pls_rfCMA-methods}}. } \usage{ pls_rfCMA(X, y, f, learnind, comp = 2 * nlevels(as.factor(y)), seed = 111,models=FALSE, ...) } \arguments{ \item{X}{Gene expression data. Can be one of the following: \itemize{ \item A \code{matrix}. Rows correspond to observations, columns to variables. \item A \code{data.frame}, when \code{f} is \emph{not} missing (s. below). \item An object of class \code{ExpressionSet}. } } \item{y}{Class labels. Can be one of the following: \itemize{ \item A \code{numeric} vector. \item A \code{factor}. \item A \code{character} if \code{X} is an \code{ExpressionSet} that specifies the phenotype variable. \item \code{missing}, if \code{X} is a \code{data.frame} and a proper formula \code{f} is provided. } \bold{WARNING}: The class labels will be re-coded to range from \code{0} to \code{K-1}, where \code{K} is the total number of different classes in the learning set. } \item{f}{A two-sided formula, if \code{X} is a \code{data.frame}. The left part correspond to class labels, the right to variables.} \item{learnind}{An index vector specifying the observations that belong to the learning set. May be \code{missing}; in that case, the learning set consists of all observations and predictions are made on the learning set.} \item{comp}{Number of Partial Least Squares components to extract. Default ist two times the number of different classes.} \item{seed}{Fix Random number generator seed to \code{seed}. This is useful to guarantee reproducibility of the results, due to the random component in the random Forest.} \item{models}{a logical value indicating whether the model object shall be returned } \item{\dots}{Further arguments to be passed to \code{randomForests} from the package of the same name.} } \value{An object of class \code{\link{cloutput}}. } \references{Boulesteix, A.L., Strimmer, K. (2007). Partial least squares: a versatile tool for the analysis of high-dimensional genomic data. \emph{Briefings in Bioinformatics 7:32-44.}} \author{Martin Slawski \email{ms@cs.uni-sb.de} Anne-Laure Boulesteix \email{boulesteix@ibe.med.uni-muenchen.de}} \seealso{\code{\link{compBoostCMA}}, \code{\link{dldaCMA}}, \code{\link{ElasticNetCMA}}, \code{\link{fdaCMA}}, \code{\link{flexdaCMA}}, \code{\link{gbmCMA}}, \code{\link{knnCMA}}, \code{\link{ldaCMA}}, \code{\link{LassoCMA}}, \code{\link{nnetCMA}}, \code{\link{pknnCMA}}, \code{\link{plrCMA}}, \code{\link{pls_ldaCMA}}, \code{\link{pls_lrCMA}}, \code{\link{pnnCMA}}, \code{\link{qdaCMA}}, \code{\link{rfCMA}}, \code{\link{scdaCMA}}, \code{\link{shrinkldaCMA}}, \code{\link{svmCMA}}} \examples{ ### 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) } \keyword{multivariate}