\name{calculateMembershipFunctions} \alias{calculateMembershipFunctions} \title{ Calculates Membership Functions } \description{ Calculates the \emph{Membership Functions}. These functions are used in the next step (\code{\link[DFP:discretizeExpressionValues]{discretizeExpressionValues}}) to discretize gene expression data. } \usage{ calculateMembershipFunctions(rmadataset, skipFactor = 3) } \arguments{ \item{rmadataset}{ \code{\link[Biobase:class.ExpressionSet]{ExpressionSet}} with numeric values containing gene expression values (rows) of samples belonging to different categories (columns).\cr The \code{\link[Biobase:class.ExpressionSet]{ExpressionSet}} also contains an \code{\link[Biobase:class.AnnotatedDataFrame]{AnnotatedDataFrame}} with metadata regarding the classes to which each sample belongs.} \item{skipFactor}{ Numeric value to omit odd values (a way of normalization).\cr Higher values imply that less samples of a gene are considered as odd. If \code{\var{skipFactor}=0} do \strong{NOT} skip.\cr \code{Default value = 3}. \code{Range[0,)}. } } \value{ \emph{Membership functions} to determine the discret value (linguistic label) corresponding to a given gene expression level. } \author{ Rodrigo Alvarez-Gonzalez\cr Daniel Glez-Pena\cr Fernando Diaz\cr Florentino Fdez-Riverola\cr Maintainer: Rodrigo Alvarez-Gonzalez <\email{rodrigo.djv@uvigo.es}> } \references{ F. Diaz; F. Fdez-Riverola; D. Glez-Pena; J.M. Corchado. Using Fuzzy Patterns for Gene Selection and Data Reduction on Microarray Data. 7th International Conference on Intelligent Data Engineering and Automated Learning: IDEAL 2006, (2006) pp. 1095-1102 } \keyword{manip}