Why does the polyfit() function in Matlab use Vandermonde-matrix and QR factorization method to solve a system of equations?
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The polyfit() function in Matlab can be used for least-squares curve fit for any given polynomial order. The method used by Matlab is to construct the Vandermonde matrix and then solve it via QR factorization.
However, why doesn't Matlab use a more direct method for solving a system of linear equations using the conditions for least-squares fit and matrix-inversion methods such as Gauss-eliminaton?
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Jan
le 9 Nov 2012
The Gauss-elimiation works also, but the QR factorization is more stable here. I do not think that the method you sugeest is "more direct".
3 commentaires
Jan
le 10 Nov 2012
Modifié(e) : Jan
le 10 Nov 2012
"Numerically stable" means that small variations of the input do not cause large changes of the output caused by rounding errors. See http://en.wikipedia.org/wiki/Numerical_stability.
Standard examples for a numerically instable method is creating the inverse of A to solve the linear system A*x=b or the simple sum:
sum([1, 1e17, -1e17]) % replies 0
sum([1e17, -1e17, 1]) % replies 1
This means, that the the sum critically depends on the order of input elements.
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