\name{pls_lrCMA-methods} \docType{methods} \alias{pls_lrCMA-methods} \alias{pls_lrCMA,matrix,numeric,missing-method} \alias{pls_lrCMA,matrix,factor,missing-method} \alias{pls_lrCMA,data.frame,missing,formula-method} \alias{pls_lrCMA,ExpressionSet,character,missing-method} \title{Partial Least Squares followed by logistic regression} \description{ This method constructs a classifier that extracts Partial Least Squares components that form the the covariates in a binary logistic regression model. The Partial Least Squares components are computed by the package \code{plsgenomics}. } \section{Methods}{ \describe{ \item{X = "matrix", y = "numeric", f = "missing"}{signature 1} \item{X = "matrix", y = "factor", f = "missing"}{signature 2} \item{X = "data.frame", y = "missing", f = "formula"}{signature 3} \item{X = "ExpressionSet", y = "character", f = "missing"}{signature 4} } For further argument and output information, consult \code{\link{pls_lrCMA}} } \keyword{multivariate}