\name{mvr} \alias{mvr} \alias{mvrs} \title{Minimum Variance Reduction} \description{ Phylogenetic tree construction based on the minimum variance reduction. } \usage{ mvr(X, V) mvrs(X, V, fs = 15) } \arguments{ \item{X}{a distance matrix.} \item{V}{a variance matrix.} \item{fs}{agglomeration criterion parameter: it is coerced as an integer and must at least equal to one.} } \details{ The MVR method can be seen as a version of BIONJ which is not restricted to the Poison model of variance (Gascuel 2000). } \value{ an object of class \code{"phylo"}. } \references{ Criscuolo, A. and Gascuel, O. (2008). Fast NJ-like algorithms to deal with incomplete distance matrices. \emph{BMC Bioinformatics}, 9. Gascuel, O. (2000). Data model and classification by trees: the minimum variance reduction (MVR) method. \emph{Journal of Classification}, \bold{17}, 67--99. } \author{Andrei Popescu \email{niteloserpopescu@gmail.com}} \seealso{ \code{\link{bionj}}, \code{\link{fastme}}, \code{\link{njs}}, \code{\link{SDM}} } \examples{ data(woodmouse) rt <- dist.dna(woodmouse, variance = TRUE) v <- attr(rt, "variance") tr <- mvr(rt, v) plot(tr, "u") } \keyword{models}