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mySVD.m
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mySVD.m
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function [U, S, V] = mySVD(X,ReducedDim)
%mySVD Accelerated singular value decomposition.
% [U,S,V] = mySVD(X) produces a diagonal matrix S, of the
% dimension as the rank of X and with nonnegative diagonal elements in
% decreasing order, and unitary matrices U and V so that
% X = U*S*V'.
%
% [U,S,V] = mySVD(X,ReducedDim) produces a diagonal matrix S, of the
% dimension as ReducedDim and with nonnegative diagonal elements in
% decreasing order, and unitary matrices U and V so that
% Xhat = U*S*V' is the best approximation (with respect to F norm) of X
% among all the matrices with rank no larger than ReducedDim.
%
% Based on the size of X, mySVD computes the eigvectors of X*X^T or X^T*X
% first, and then convert them to the eigenvectors of the other.
%
% See also SVD.
%
% version 2.0 --Feb/2009
% version 1.0 --April/2004
%
% Written by Deng Cai (dengcai AT gmail.com)
%
MAX_MATRIX_SIZE = 1600; % You can change this number according your machine computational power
EIGVECTOR_RATIO = 0.1; % You can change this number according your machine computational power
if ~exist('ReducedDim','var')
ReducedDim = 0;
end
[nSmp, mFea] = size(X);
if mFea/nSmp > 1.0713
ddata = X*X';
ddata = max(ddata,ddata');
dimMatrix = size(ddata,1);
if (ReducedDim > 0) && (dimMatrix > MAX_MATRIX_SIZE) && (ReducedDim < dimMatrix*EIGVECTOR_RATIO)
option = struct('disp',0);
[U, eigvalue] = eigs(ddata,ReducedDim,'la',option);
eigvalue = diag(eigvalue);
else
if issparse(ddata)
ddata = full(ddata);
end
[U, eigvalue] = eig(ddata);
eigvalue = diag(eigvalue);
[dump, index] = sort(-eigvalue);
eigvalue = eigvalue(index);
U = U(:, index);
end
clear ddata;
maxEigValue = max(abs(eigvalue));
eigIdx = find(abs(eigvalue)/maxEigValue < 1e-10);
eigvalue(eigIdx) = [];
U(:,eigIdx) = [];
if (ReducedDim > 0) && (ReducedDim < length(eigvalue))
eigvalue = eigvalue(1:ReducedDim);
U = U(:,1:ReducedDim);
end
eigvalue_Half = eigvalue.^.5;
S = spdiags(eigvalue_Half,0,length(eigvalue_Half),length(eigvalue_Half));
if nargout >= 3
eigvalue_MinusHalf = eigvalue_Half.^-1;
V = X'*(U.*repmat(eigvalue_MinusHalf',size(U,1),1));
end
else
ddata = X'*X;
ddata = max(ddata,ddata');
dimMatrix = size(ddata,1);
if (ReducedDim > 0) && (dimMatrix > MAX_MATRIX_SIZE) && (ReducedDim < dimMatrix*EIGVECTOR_RATIO)
option = struct('disp',0);
[V, eigvalue] = eigs(ddata,ReducedDim,'la',option);
eigvalue = diag(eigvalue);
else
if issparse(ddata)
ddata = full(ddata);
end
[V, eigvalue] = eig(ddata);
eigvalue = diag(eigvalue);
[dump, index] = sort(-eigvalue);
eigvalue = eigvalue(index);
V = V(:, index);
end
clear ddata;
maxEigValue = max(abs(eigvalue));
eigIdx = find(abs(eigvalue)/maxEigValue < 1e-10);
eigvalue(eigIdx) = [];
V(:,eigIdx) = [];
if (ReducedDim > 0) && (ReducedDim < length(eigvalue))
eigvalue = eigvalue(1:ReducedDim);
V = V(:,1:ReducedDim);
end
eigvalue_Half = eigvalue.^.5;
S = spdiags(eigvalue_Half,0,length(eigvalue_Half),length(eigvalue_Half));
eigvalue_MinusHalf = eigvalue_Half.^-1;
U = X*(V.*repmat(eigvalue_MinusHalf',size(V,1),1));
end