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svd
singular value decomposition
Calling Sequence
s=svd(X) [U,S,V]=svd(X) [U,S,V]=svd(X,0) (obsolete) [U,S,V]=svd(X,"e") [U,S,V,rk]=svd(X [,tol])
Arguments
- X
- a real or complex matrix 
- s
- real vector (singular values) 
- S
- real diagonal matrix (singular values) 
- U,V
- orthogonal or unitary square matrices (singular vectors). 
- tol
- real number 
Description
[U,S,V] = svd(X) produces a diagonal matrix
            S , of the same dimension as X and with
            nonnegative diagonal elements in decreasing order, and unitary
            matrices U and V so that X = U*S*V'.
[U,S,V] = svd(X,0) produces the "economy
            size" decomposition. If X is m-by-n with m >
            n, then only the first n columns of U are computed
            and S is n-by-n.
s= svd(X) by itself, returns a vector s
            containing the singular values.
[U,S,V,rk]=svd(X,tol) gives in addition rk, the numerical rank of X i.e. the number of 
            singular values larger than tol.
The default value of tol is the same as in rank.
See Also
Used Functions
svd decompositions are based on the Lapack routines DGESVD for real matrices and ZGESVD for the complex case.
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