/* statistics/covar_source.c * * Copyright (C) 1996, 1997, 1998, 1999, 2000, 2007 Jim Davies, Brian Gough * * This program is free software; you can redistribute it and/or modify * it under the terms of the GNU General Public License as published by * the Free Software Foundation; either version 3 of the License, or (at * your option) any later version. * * This program is distributed in the hope that it will be useful, but * WITHOUT ANY WARRANTY; without even the implied warranty of * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU * General Public License for more details. * * You should have received a copy of the GNU General Public License * along with this program; if not, write to the Free Software * Foundation, Inc., 51 Franklin Street, Fifth Floor, Boston, MA 02110-1301, USA. */ static double FUNCTION(compute,covariance) (const BASE data1[], const size_t stride1, const BASE data2[], const size_t stride2, const size_t n, const double mean1, const double mean2); static double FUNCTION(compute,covariance) (const BASE data1[], const size_t stride1, const BASE data2[], const size_t stride2, const size_t n, const double mean1, const double mean2) { /* takes a dataset and finds the covariance */ long double covariance = 0 ; size_t i; /* find the sum of the squares */ for (i = 0; i < n; i++) { const long double delta1 = (data1[i * stride1] - mean1); const long double delta2 = (data2[i * stride2] - mean2); covariance += (delta1 * delta2 - covariance) / (i + 1); } return covariance ; } double FUNCTION(gsl_stats,covariance_m) (const BASE data1[], const size_t stride1, const BASE data2[], const size_t stride2, const size_t n, const double mean1, const double mean2) { const double covariance = FUNCTION(compute,covariance) (data1, stride1, data2, stride2, n, mean1, mean2); return covariance * ((double)n / (double)(n - 1)); } double FUNCTION(gsl_stats,covariance) (const BASE data1[], const size_t stride1, const BASE data2[], const size_t stride2, const size_t n) { const double mean1 = FUNCTION(gsl_stats,mean) (data1, stride1, n); const double mean2 = FUNCTION(gsl_stats,mean) (data2, stride2, n); return FUNCTION(gsl_stats,covariance_m)(data1, stride1, data2, stride2, n, mean1, mean2); } /* gsl_stats_correlation() Calculate Pearson correlation = cov(X, Y) / (sigma_X * sigma_Y) This routine efficiently computes the correlation in one pass of the data and makes use of the algorithm described in: B. P. Welford, "Note on a Method for Calculating Corrected Sums of Squares and Products", Technometrics, Vol 4, No 3, 1962. This paper derives a numerically stable recurrence to compute a sum of products S = sum_{i=1..N} [ (x_i - mu_x) * (y_i - mu_y) ] with the relation S_n = S_{n-1} + ((n-1)/n) * (x_n - mu_x_{n-1}) * (y_n - mu_y_{n-1}) */ double FUNCTION(gsl_stats,correlation) (const BASE data1[], const size_t stride1, const BASE data2[], const size_t stride2, const size_t n) { size_t i; long double sum_xsq = 0.0; long double sum_ysq = 0.0; long double sum_cross = 0.0; long double ratio; long double delta_x, delta_y; long double mean_x, mean_y; long double r; /* * Compute: * sum_xsq = Sum [ (x_i - mu_x)^2 ], * sum_ysq = Sum [ (y_i - mu_y)^2 ] and * sum_cross = Sum [ (x_i - mu_x) * (y_i - mu_y) ] * using the above relation from Welford's paper */ mean_x = data1[0 * stride1]; mean_y = data2[0 * stride2]; for (i = 1; i < n; ++i) { ratio = i / (i + 1.0); delta_x = data1[i * stride1] - mean_x; delta_y = data2[i * stride2] - mean_y; sum_xsq += delta_x * delta_x * ratio; sum_ysq += delta_y * delta_y * ratio; sum_cross += delta_x * delta_y * ratio; mean_x += delta_x / (i + 1.0); mean_y += delta_y / (i + 1.0); } r = sum_cross / (sqrt(sum_xsq) * sqrt(sum_ysq)); return r; } /* gsl_stats_spearman() Compute Spearman rank correlation coefficient Inputs: data1 - data1 vector stride1 - stride of data1 data2 - data2 vector stride2 - stride of data2 n - number of elements in data1 and data2 work - additional workspace of size 2*n Return: Spearman rank correlation coefficient */ double FUNCTION(gsl_stats,spearman) (const BASE data1[], const size_t stride1, const BASE data2[], const size_t stride2, const size_t n, double work[]) { size_t i; gsl_vector_view ranks1 = gsl_vector_view_array(&work[0], n); gsl_vector_view ranks2 = gsl_vector_view_array(&work[n], n); double r; for (i = 0; i < n; ++i) { gsl_vector_set(&ranks1.vector, i, data1[i * stride1]); gsl_vector_set(&ranks2.vector, i, data2[i * stride2]); } /* sort data1 and update data2 at same time; compute rank of data1 */ gsl_sort_vector2(&ranks1.vector, &ranks2.vector); compute_rank(&ranks1.vector); /* now sort data2, updating ranks1 appropriately; compute rank of data2 */ gsl_sort_vector2(&ranks2.vector, &ranks1.vector); compute_rank(&ranks2.vector); /* compute correlation of rank vectors in double precision */ r = gsl_stats_correlation(ranks1.vector.data, ranks1.vector.stride, ranks2.vector.data, ranks2.vector.stride, n); return r; }