% Generated by roxygen2: do not edit by hand % Please edit documentation in R/GuidedSparseKmeans.R \name{GuidedSparseKmeans} \alias{GuidedSparseKmeans} \title{GuidedSparseKmeans} \usage{ GuidedSparseKmeans(x, z, K, s, lam, model, nstart = 20, maxiter = 15, silence = F) } \arguments{ \item{x}{Gene expression matrix, n*p (rows for subjects and columns for genes).} \item{z}{One phenotypic variable from clinical dataset, a vector.} \item{K}{Number of clusters.} \item{s}{The boundary of l1n weights, a vector.} \item{lam}{The intensity of guidance.} \item{model}{The model fitted to obtain R2, please select model from 'linear', 'logit', 'exp', 'polr','cox'.} \item{nstart}{Specify the number of starting point for K-means.} \item{maxiter}{Maximum number of iteration.} \item{silence}{Output progress or not.} } \value{ m lists, m is the length of parameter s. Each list is consisting of \item{weights}{weight for each feature, zero weight means the feature is not selected.} \item{clusters}{cluster results.} \item{object}{objective value.} \item{bound}{a boundary of l1n weights} \item{R2.per}{R-squared or pseudo R-squared between phenotypic variable and expression value of each gene, a vector.} } \description{ Guided Sparse K-means } \details{ Guided Sparse K-means integrating clinical dataset with gene expression dataset. } \author{ Lingsong Meng }