| Literature DB >> 3347022 |
C R Dohrmann1, H R Busby, D M Trujillo.
Abstract
Smoothing and differentiation of noisy data using spline functions requires the selection of an unknown smoothing parameter. The method of generalized cross-validation provides an excellent estimate of the smoothing parameter from the data itself even when the amount of noise associated with the data is unknown. In the present model only a single smoothing parameter must be obtained, but in a more general context the number may be larger. In an earlier work, smoothing of the data was accomplished by solving a minimization problem using the technique of dynamic programming. This paper shows how the computations required by generalized cross-validation can be performed as a simple extension of the dynamic programming formulas. The results of numerical experiments are also included.Mesh:
Year: 1988 PMID: 3347022 DOI: 10.1115/1.3108403
Source DB: PubMed Journal: J Biomech Eng ISSN: 0148-0731 Impact factor: 2.097