Data di Pubblicazione:
2000
Abstract:
When tuning the smoothness parameter of nonparametric regression splines, the evaluation of the so-called degrees of freedom is one of the most computer-intensive tasks. In the paper, a closed-form expression of the degrees of freedom is obtained for the case of cubic splines and equally spaced data when the number of data tends to infinity. State-space methods, Kalman filtering and spectral factorization techniques are used to prove that the asymptotic degrees of freedom are equal to the variance of a suitably defined stationary process. The closed-form expression opens the way to fast spline smoothing algorithms whose computational complexity is about one-half of standard methods (or even one-fourth under further approximations).
Tipologia CRIS:
1.1 Articolo in rivista
Elenco autori:
DE NICOLAO, Giuseppe; FERRARI TRECATE, Giancarlo; Sparacino, G.
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