\name{plotRatioScatter} \alias{plotRatioScatter} \title{Plot ratios of all possible combinations of IP and CONTROL} \description{ A matrix of pairwise scatterplots of the ratios is created. The lower panel shows the correlation of the data. } \usage{ plotRatioScatter(eSet, ip, control, density=F, sample=NULL, cluster=T, cex=1) } \arguments{ \item{ eSet }{ an ExprssionSet or matrix, containing the data } \item{ ip }{ an integer, or boolean vector, that indicates, which columns in the ExpressionSet are IP experiments } \item{ control }{ an integer, or boolean vector, that indicates, which columns in the ExpressionSet are CONTROL or REFERENCE experiments } \item{ density }{ if TRUE, a density scatter plot is plotted. This plot shows the density of the data. } \item{ sample }{ An integer, indicating the number of subsamples to take for the density scatterplot. This is only recommended if the data is very large, as the density computation takes some time. }# \item{cluster}{if cluster=T, the experiments are clustered and similiar experiments are plotted together.} \item{cex}{see ?par} } \author{ Benedikt Zacher \email{zacher@lmb.uni-muenchen.de}} \seealso{\code{\link[graphics]{pairs}}, \code{\link{densityscatter}}} \examples{ ## points <- 10^4 x <- rnorm(points/2) x <- c(x,x+2.5) x <- sign(x)*abs(x)^1.3 y <- x + rnorm(points,sd=0.8) z <- y*2 mat <- matrix(c(x,y,z), ncol=3) colnames(mat) <- c("A", "B1", "B2") plotRatioScatter(mat, c(TRUE, FALSE, FALSE), c(FALSE, TRUE, TRUE), density=TRUE) } \keyword{hplot}