# Generated by using Rcpp::compileAttributes() -> do not edit by hand # Generator token: 10BE3573-1514-4C36-9D1C-5A225CD40393 #' fast Euclidean distance matrix #' #' @param x matrix with sample rows for which the distance matrix is computed (to use with vectors, use \code{as.matrix(x)}) #' @examples #' #require(microbenchmark) #' #x = rnorm(100) #' #microbenchmark(fastdist(as.matrix(x)),as.matrix(dist(x))) #' @export fastdist <- function(x) { .Call('_multivariance_fastdist', PACKAGE = 'multivariance', x) } #' double center a symmetric matrix #' #' @param x symmetric matrix #' @param normalize boolean. If \code{TRUE} the matrix will be normalized to mean 1. #' @keywords internal doubleCenterSymMat <- function(x, normalize) { .Call('_multivariance_doubleCenterSymMat', PACKAGE = 'multivariance', x, normalize) } #' fast centered Euclidean distance matrix #' #' @param x matrix with sample rows for which the distance matrix is computed (to use with vectors, use \code{as.matrix(x)}) #' @param normalize boolean. If \code{TRUE} the matrix will be normalized to mean 1. #' @export fastEuclideanCdm <- function(x, normalize) { .Call('_multivariance_fastEuclideanCdm', PACKAGE = 'multivariance', x, normalize) } #' for the fast detection of the full dependence structure #' #' Returns the row indicies of matrix A which match with B #' #' @param A matrix #' @param B matrix whose rows are subset of A #' #' @examples #' # A = t(utils::combn(10,3)) #' # B = A[sort(sample.int(nrow(A),10)),] #' # match_rows(A,B) #' #' @keywords internal match_rows <- function(A, B) { .Call('_multivariance_match_rows', PACKAGE = 'multivariance', A, B) }