\title{Sigma vs A plot for microarray linear model} \name{plotSA} \alias{plotSA} \description{ Plot log residual standard deviation versus average log expression for a fitted microarray linear model. } \usage{ plotSA(fit, xlab="Average log-expression", ylab="log2(sigma)", zero.weights=FALSE, pch=16, cex=0.2, ...) } \arguments{ \item{fit}{an \code{MArrayLM} object.} \item{xlab}{character string giving label for x-axis} \item{ylab}{character string giving label for y-axis} \item{pch}{vector or list of plotting characters. Default is integer code 16 which gives a solid circle.} \item{cex}{numeric expansion factor for plotting character. Defaults to 0.2.} \item{zero.weights}{logical, should spots with zero or negative weights be plotted?} \item{...}{any other arguments are passed to \code{plot}} } \details{ This plot is used to check the mean-variance relationship of the expression data, after fitting a linear model. See \code{\link[graphics]{points}} for possible values for \code{pch} and \code{cex}. } \value{A plot is created on the current graphics device.} \author{Gordon Smyth} \seealso{ An overview of diagnostic functions available in LIMMA is given in \link{09.Diagnostics}. } \keyword{hplot}