Vandermonde with Arnoldi

11/22/2019
by   Pablo D. Brubeck, et al.
0

Vandermonde matrices are exponentially ill-conditioned, rendering the familiar "polyval(polyfit)" algorithm for polynomial interpolation and least-squares fitting ineffective at higher degrees. We show that Arnoldi orthogonalization fixes the problem.

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