Scilab Home page | Wiki | Bug tracker | Forge | Mailing list archives | ATOMS | File exchange
Please login or create an account
Change language to: English - Português - Русский - 日本語

Please note that the recommended version of Scilab is 6.0.0. This page might be outdated.
See the recommended documentation of this function

Aide de Scilab >> Interface avec UMFPACK (sparse) > res_with_prec

res_with_prec

computes the residual r = Ax-b with precision

Calling Sequence

[r,norm2_r] = res_with_prec(A, x, b)

Arguments

A

real or complex sparse matrix (m x n)

x

column vector (n x 1) or matrix (n x p)

b

column vector (m x 1) or matrix (m x p)

r

column vector (m x 1) or matrix (m x p)

norm2_r

scalar or vector (1 x p) when b is a m x p matrix

Description

This function computes the residual of a linear system r = Ax - b (together with its 2-norm) with the additional precision provided on "Intel like" FPU (80 bits in place of 64) if the compiler translate "long double" to use it. Else one must get the same than using A*x - b at the scilab level. In both cases using [r, nr] = res_with_prec(A,x,b) is faster than r = A*x - b (and faster than r = A*x - b; nr = norm(r)).

When p > 1, norm2_r(i) is the 2-norm of the vector r(:,i).

Examples

[A] = ReadHBSparse(SCI+"/modules/umfpack/examples/bcsstk24.rsa");
C_ptr = taucs_chfact(A);
b = rand(size(A,1),1);
x0 = taucs_chsolve(C_ptr, b);
norm(A*x0 - b)
norm(res_with_prec(A, x0, b))

See Also

  • rafiter — Iterative refinement for a s.p.d. linear system. This function is obsolete.
Scilab Enterprises
Copyright (c) 2011-2017 (Scilab Enterprises)
Copyright (c) 1989-2012 (INRIA)
Copyright (c) 1989-2007 (ENPC)
with contributors
Last updated:
Thu Oct 02 13:54:33 CEST 2014