\name{simnewsamples} \alias{simnewsamples} \alias{simnewsamples.gagafit} %- Also NEED an '\alias' for EACH other topic documented here. \title{ Posterior predictive simulation } \description{ Simulates parameters and data from the posterior and posterior predictive distributions, respectively, of a GaGa or MiGaGa model. } \usage{ simnewsamples(gg.fit, groupsnew, sel, x, groups) } %- maybe also 'usage' for other objects documented here. \arguments{ \item{gg.fit}{GaGa or MiGaGa fit (object of type \code{gagafit}, as returned by \code{fitGG}). } \item{groupsnew}{ Vector indicating the group that each new sample should belong to. \code{length(groupsnew)} is the number of new samples that will be generated. } \item{sel}{Numeric vector with the indexes of the genes we want to draw new samples for (defaults to all genes). If a logical vector is indicated, it is converted to \code{(1:nrow(x))[sel]}.} \item{x}{\code{ExpressionSet}, \code{exprSet}, data frame or matrix containing the gene expression measurements used to fit the model.} \item{groups}{If \code{x} is of type \code{ExpressionSet} or \code{exprSet}, \code{groups} should be the name of the column in \code{pData(x)} with the groups that one wishes to compare. If \code{x} is a matrix or a data frame, \code{groups} should be a vector indicating to which group each column in x corresponds to.} } \details{ The shape parameters are actually drawn from a gamma approximation to their posterior distribution. The function \code{rcgamma} implements this approximation. } \value{ Object of class 'ExpressionSet'. Expression values can be accessed via \code{exprs(object)} and the parameter values used to generate the expression values can be accessed via \code{fData(object)}. } \references{ Rossell D. GaGa: a simple and flexible hierarchical model for microarray data analysis. \url{http://rosselldavid.googlepages.com}. } \author{ David Rossell } \seealso{ \code{\link{checkfit}} for posterior predictive plot, \code{\link{simGG}} for prior predictive simulation. } \examples{ } % Add one or more standard keywords, see file 'KEYWORDS' in the % R documentation directory. \keyword{ distribution } \keyword{ models }