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Smoothing noisy data with spline functions: Estimating the correct degree of smoothing by the method of generalized cross-validation. (English) Zbl 0377.65007


MSC:

65D10 Numerical smoothing, curve fitting
41A15 Spline approximation
65K05 Numerical mathematical programming methods
65C05 Monte Carlo methods
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References:

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[17] Wahba, G.: A survey of some smoothing problems and the method of generalized cross validation for solving them. University of Wisconsin-Madison, Statistics Dept., Technical Report #457. In: Proceedings of the Conference on Applications of Statistics, Dayton, Ohio (P.R. Krishnaiah, ed.) June 14-18, 1976
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