\name{GenerateBootMatrix} \alias{GenerateBootMatrix} \alias{GenerateBootMatrix-methods} \alias{GenerateBootMatrix,missing,numeric-method} \alias{GenerateBootMatrix,missing,factor-method} \alias{GenerateBootMatrix,ExpressionSet,character-method} %\alias{summary,BootMatrix-method} \title{Altered datasets via bootstrap} \description{ Generates an object of class \link{BootMatrix} to be used for \link{RepeatRanking}. } \usage{ GenerateBootMatrix(x, y, replicates = 50, type = c("unpaired", "paired", "onesample"), maxties = NULL, minclassize = 2, balancedclass = FALSE, balancedsample = FALSE, control) } %- maybe also 'usage' for other objects documented here. \arguments{ \item{x}{Only needed if \code{y} is stored within an \code{ExpressionSet}.} \item{y}{\code{y} may be a \code{numeric} vector or a factor with at most two levels.\cr If \code{x} is an \code{ExpressionSet}, then \code{y} is a character specifying the phenotype variable in \code{pData}.\cr If \code{type = "paired"}, take care that the coding is correct.} \item{replicates}{Number of bootstrap replicates to be generated.} \item{type}{One of \code{"paired", "unpaired", "onesample"}, depends on the type of test to be performed, s. for example \link{RankingTstat}.} \item{maxties}{The maximum number of ties allowed per observation. For example, \code{maxties=2} means that no observation occurs more than \code{maxties+1 = 3} times per bootstrap sample.} \item{minclassize}{If \code{minclassize=k} for some integer \code{k}, then the number of observations in each class are grater then or equal to \code{minclassize} for each bootstrap sample.} \item{balancedclass}{If \code{balancedclass=TRUE}, then the proportions of the two classes are the same for each bootstrap sample. It is a shortcut for a certain value of \code{minclasssize}. May not be reasonable if class proportions are unbalanced in the original sample.} \item{balancedsample}{Should balanced bootstrap (s. details) be performed ?} \item{control}{Further control arguments concerning the generation process of the bootstrap matrix, s. \link{samplingcontrol}.} } \details{ For the case that \code{balancedsample=TRUE}, all other constraints as imposed by \code{maxties}, \code{minclassize} and so on are ignored. Balanced bootstrap (s. reference below) means that each observation occurs equally frequently (with respect to all bootstrap replications). } \note{ No bootstrap sample will occur more than once, i.e. each replication is unique. } \section{warning}{If the generation process (partially) fails, try to reduce the constraints or change the argument \code{control}.} \value{An object of class \code{BootMatrix}} \references{Davison, A.C., Hinkley, D.V. (1997) \cr Bootstrap Methods and their Application. \emph{Cambridge University Press}} \author{Martin Slawski \cr Anne-Laure Boulesteix} \seealso{\link{GenerateFoldMatrix}, \link{RepeatRanking}} \keyword{univar} \examples{ ## Load toy gene expression data data(toydata) ### class labels yy <- toydata[1,] ### Generate Boot Matrix, maximum number of ties=3, ### minimum classize=5, 30 replications: boot <- GenerateBootMatrix(y = yy, maxties=3, minclassize=5, repl=30) }