\name{dendro.subjects} \alias{dendro.subjects} \title{Subjects dendrogram} \description{Get dendrogram for subjects (observations) based on variables of mixed data types} \usage{ dendro.subjects(data, weights, linkage="ward.D2") } \arguments{ \item{data}{data frame} \item{weights}{optional vector of weights for variables in \code{data}} \item{linkage}{agglomeration method used for hierarchical clustering; corresponds to parameter \code{method} of \code{\link[stats]{hclust}}} } \details{Distances between subjects are based on Gower's general similarity coefficient with an extension of Podani for ordinal variables, see \code{\link[FD]{gowdis}}. In the case that all variables are quantitative, Euclidean distances are used. Then a dendrogram is derived by standard hierarchical clustering (\code{\link[stats]{hclust}} with agglomeration \code{method = "ward.D2"} by default).} \value{An object of class \code{\link[stats]{dendrogram}}} \references{ Gower J (1971). A general coefficient of similarity and some of its properties. Biometrics, 27:857-871. Podani J (1999). Extending Gower's general coefficient of similarity to ordinal characters. Taxon, 48(2):331-340. } \author{Manuela Hummel} %\note{ %% ~~further notes~~ %} \seealso{\code{\link{dendro.variables}}, \code{\link{dist.subjects}}, \code{\link{mix.heatmap}}} \examples{ data(mixdata) dend <- dendro.subjects(mixdata) plot(dend) ## example with weights w <- rep(1:2, each=5) dend <- dendro.subjects(mixdata, weights=w) plot(dend) } \keyword{ cluster }