// Copyright (C) 2009-2015 National ICT Australia (NICTA) // // This Source Code Form is subject to the terms of the Mozilla Public // License, v. 2.0. If a copy of the MPL was not distributed with this // file, You can obtain one at http://mozilla.org/MPL/2.0/. // ------------------------------------------------------------------- // // Written by Conrad Sanderson - http://conradsanderson.id.au //! \addtogroup op_var //! @{ //! \brief //! For each row or for each column, find the variance. //! The result is stored in a dense matrix that has either one column or one row. //! The dimension, for which the variances are found, is set via the var() function. template inline void op_var::apply(Mat& out, const mtOp& in) { arma_extra_debug_sigprint(); typedef typename T1::elem_type in_eT; typedef typename T1::pod_type out_eT; const unwrap_check_mixed tmp(in.m, out); const Mat& X = tmp.M; const uword norm_type = in.aux_uword_a; const uword dim = in.aux_uword_b; arma_debug_check( (norm_type > 1), "var(): parameter 'norm_type' must be 0 or 1" ); arma_debug_check( (dim > 1), "var(): parameter 'dim' must be 0 or 1" ); const uword X_n_rows = X.n_rows; const uword X_n_cols = X.n_cols; if(dim == 0) { arma_extra_debug_print("op_var::apply(): dim = 0"); out.set_size((X_n_rows > 0) ? 1 : 0, X_n_cols); if(X_n_rows > 0) { out_eT* out_mem = out.memptr(); for(uword col=0; col 0) ? 1 : 0); if(X_n_cols > 0) { podarray dat(X_n_cols); in_eT* dat_mem = dat.memptr(); out_eT* out_mem = out.memptr(); for(uword row=0; row inline typename T1::pod_type op_var::var_vec(const Base& X, const uword norm_type) { arma_extra_debug_sigprint(); typedef typename T1::elem_type eT; arma_debug_check( (norm_type > 1), "var(): parameter 'norm_type' must be 0 or 1" ); const Proxy P(X.get_ref()); const podarray tmp(P); return op_var::direct_var(tmp.memptr(), tmp.n_elem, norm_type); } template inline typename get_pod_type::result op_var::var_vec(const subview_col& X, const uword norm_type) { arma_extra_debug_sigprint(); arma_debug_check( (norm_type > 1), "var(): parameter 'norm_type' must be 0 or 1" ); return op_var::direct_var(X.colptr(0), X.n_rows, norm_type); } template inline typename get_pod_type::result op_var::var_vec(const subview_row& X, const uword norm_type) { arma_extra_debug_sigprint(); arma_debug_check( (norm_type > 1), "var(): parameter 'norm_type' must be 0 or 1" ); const Mat& A = X.m; const uword start_row = X.aux_row1; const uword start_col = X.aux_col1; const uword end_col_p1 = start_col + X.n_cols; podarray tmp(X.n_elem); eT* tmp_mem = tmp.memptr(); for(uword i=0, col=start_col; col < end_col_p1; ++col, ++i) { tmp_mem[i] = A.at(start_row, col); } return op_var::direct_var(tmp.memptr(), tmp.n_elem, norm_type); } //! find the variance of an array template inline eT op_var::direct_var(const eT* const X, const uword n_elem, const uword norm_type) { arma_extra_debug_sigprint(); if(n_elem >= 2) { const eT acc1 = op_mean::direct_mean(X, n_elem); eT acc2 = eT(0); eT acc3 = eT(0); uword i,j; for(i=0, j=1; j inline eT op_var::direct_var_robust(const eT* const X, const uword n_elem, const uword norm_type) { arma_extra_debug_sigprint(); if(n_elem > 1) { eT r_mean = X[0]; eT r_var = eT(0); for(uword i=1; i inline T op_var::direct_var(const std::complex* const X, const uword n_elem, const uword norm_type) { arma_extra_debug_sigprint(); typedef typename std::complex eT; if(n_elem >= 2) { const eT acc1 = op_mean::direct_mean(X, n_elem); T acc2 = T(0); eT acc3 = eT(0); for(uword i=0; i inline T op_var::direct_var_robust(const std::complex* const X, const uword n_elem, const uword norm_type) { arma_extra_debug_sigprint(); typedef typename std::complex eT; if(n_elem > 1) { eT r_mean = X[0]; T r_var = T(0); for(uword i=1; i