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spm_Npdf.m
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spm_Npdf.m
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function f = spm_Npdf(x,u,v)
% Probability Density Function (PDF) of univariate Normal distribution
% FORMAT f = spm_Npdf(x,u,v)
%
% x - ordinates
% u - mean [Defaults to 0]
% v - variance (v>0) [Defaults to 1]
% f - pdf of N(u,v) at x
%_______________________________________________________________________
%
% spm_Npdf returns the Probability Density Function (PDF) for the
% univariate Normal (Gaussian) family of distributions.
%
% Definition:
%-----------------------------------------------------------------------
% Let random variable X have a Normal distribution with mean u and
% variance v, then Z~N(u,v). The Probability Density Function (PDF) of
% the Normal (sometimes called Gaussian) family is f(x), defined on all
% real x, given by: (See Evans et al., Ch29)
%
% 1 ( (x-u)^2 )
% f(r) = ------------ x exp| ------ |
% sqrt(v*2*pi) ( 2v )
%
% The PDF of the standard Normal distribution, with zero mean and unit
% variance, Z~N(0,1), is commonly referred to as \phi(z).
%
% References:
%-----------------------------------------------------------------------
% Evans M, Hastings N, Peacock B (1993)
% "Statistical Distributions"
% 2nd Ed. Wiley, New York
%
% Abramowitz M, Stegun IA, (1964)
% "Handbook of Mathematical Functions"
% US Government Printing Office
%
% Press WH, Teukolsky SA, Vetterling AT, Flannery BP (1992)
% "Numerical Recipes in C"
% Cambridge
%
%_______________________________________________________________________
% @(#)spm_Npdf.m 2.2 Andrew Holmes 99/04/26
%-Format arguments, note & check sizes
%-----------------------------------------------------------------------
if nargin<3, v=1; end
if nargin<2, u=0; end
if nargin<1, f=[]; return, end
ad = [ndims(x);ndims(u);ndims(v)];
rd = max(ad);
as = [ [size(x),ones(1,rd-ad(1))];...
[size(u),ones(1,rd-ad(2))];...
[size(v),ones(1,rd-ad(3))] ];
rs = max(as);
xa = prod(as,2)>1;
if sum(xa)>1 & any(any(diff(as(xa,:)),1))
error('non-scalar args must match in size'), end
%-Computation
%-----------------------------------------------------------------------
%-Initialise result to zeros
f = zeros(rs);
%-Only defined for strictly positive variance v. Return NaN if undefined.
md = ( ones(size(x)) & ones(size(u)) & v>0 );
if any(~md(:)), f(~md) = NaN;
warning('Returning NaN for out of range arguments'), end
%-Non-zero where defined
Q = find( md );
if isempty(Q), return, end
if xa(1), Qx=Q; else Qx=1; end
if xa(2), Qu=Q; else Qu=1; end
if xa(3), Qv=Q; else Qv=1; end
%-Compute
f(Q) = exp( -(x(Qx)-u(Qu)).^2 ./ (2*v(Qv)) ) ./ sqrt(2*pi*v(Qv));