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corrcoef2.m
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corrcoef2.m
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function [r,p,t,z,p_yy,z_yy,r_yy]=corrcoef2(X,Y,sp)
%CORRCOEF2 - Iterative cap function for CORRCOEF
% [r,p,t,z]=corrcoef2(X,Y) computes the Pearson's correlation
% coefficients between the columns of X (a M-by-N matrix) and columns of
% Y (a M-by-P one) leading to a N-by-P matrix.
% r and p have the same size as the rest of Y.
% T-value t is computed as: t = r.*sqrt((n-2)./(1-r.^2));
% Z-score z is : z = log(abs((r+1)./(r-1)))/2
% [ref: http://faculty.chass.ncsu.edu/garson/PA765/correl.htm#faq]
%
% [r,p,t,z,p_yy,z_yy,r_yy]=corrcoef2(X,Y) also reports significant
% difference between correlations coefficients derived from Y columns.
% This requires that X is a M-by-1 vector.
% Ref: Comparing correlated correlation coefficients, Meng, 1992
%
% [...] = corrcoef2(X,Y,sp) draws scatterplots (if sp==true)
%See also: corrcoef
% Author: K. N'Diaye (kndiaye01<at>yahoo.fr)
% Copyright (C) 2010
% 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 2 of the License, or (at your
% option) any later version: http://www.gnu.org/copyleft/gpl.html
%
% ----------------------------- Script History ---------------------------------
% KND 2010-02-04 Creation
%
% ----------------------------- Script History
% ---------------------------------
sX=size(X);
sY=size(Y);
Y=Y(:,:);
if isvector(X)
X=X(:);
sX=size(X);
if numel(X)~=sY(1)
error('KND:corrcoef2:XYmismatch', 'The length of X and the number of lines in Y must match.');
end
else
if ~isequal(sX(3:end),sY(3:end))
error('KND:corrcoef2:XYmismatch', 'The remaining dimensions of X and Y must match.');
end
X=X(:,:);
end
r=NaN*zeros([sX(2) sY(2:end)]);
p=r;
for ix=1:sX(2)
for iy=1:sY(2)
[r2,p2]=corrcoef(X(:,ix),Y(:,iy));
r(ix,iy)=r2(2);
p(ix,iy)=p2(2);
end
end
if nargout>2
n=sX(1);
t = r.*sqrt((n-2)./(1-r.^2));
if nargout>3
z = log(abs((r+1)./(r-1)))/2;
end
end
if nargout > 4
if sX(2) > 1
error('KND:corrcoef2:Xvectorfor', 'X must be a vector of observations for comparing regressors in Y.');
end
nY=prod(sY(2:end));
% pairs of Y's
yy = nchoosek(1:nY,2);
% indices of the yy
idx = find(tril(ones(nY),-1));
% cross-correlations in Y
r_yy = corrcoef(Y);
r_yy = r_yy(idx);
r2 = sum(r(yy).^2')'/2;
f = (1-r_yy)./2./(1-r2);
f(f>1)=1;
h = 1 + r2./(1-r2).*(1-f);
z_yy=diag(Inf*ones(nY,1));
z_yy(idx) = diff(z(yy)')'.*sqrt((n-3)./2./(1-r_yy)./h);
z_yy = z_yy + -z_yy';
%z_yy(z_yy<0)=-Inf;
p_yy = 0.5 * erfc(z_yy ./ sqrt(2));
end
if nargin<3
return
end
% Scatterplots
nx=size(X,2);
ny=size(Y,2);
for i=1:nx
for j=1:ny
subplot(nx,ny,(j-1)*nx+i)
plot(Y(:,j),X(:,i),'x')
axis square
end
end
return
%% avoid using corrcoef
% ToDO: Implement directly corrcoef code down here.
t = isnan(x);
% Compute correlation for each pair
r = eye(m,class(x));
n = diag(sum(t,1));
jk = 1:2;
for j = 2:m
jk(1) = j;
for k=1:j-1
jk(2) = k;
tjk = ~any(t(:,jk),2);
njk = sum(tjk);
if njk<=1
rjk = NaN;
else
rjk = correl(x(tjk,jk));
rjk = rjk(1,2);
end
r(j,k) = rjk;
n(j,k) = njk;
end
end
r = r + tril(r,-1)';
n = n + tril(n,-1)';
% ------------------------------------------------
function [r,n] = correl(x)
%CORREL Compute correlation matrix without error checking.
[n,m] = size(x);
c = cov(x);
d = sqrt(diag(c)); % sqrt first to avoid under/overflow
dd = d*d'; dd(1:m+1:end) = diag(c); % remove roundoff on diag
r = c ./ dd;