English

Constrained Spline Smoothing

Numerical Analysis 2014-04-01 v1 Classical Analysis and ODEs

Abstract

Several results on constrained spline smoothing are obtained. In particular, we establish a general result, showing how one can constructively smooth any monotone or convex piecewise polynomial function (ppf) (or any qq-monotone ppf, q3q\geq 3, with one additional degree of smoothness) to be of minimal defect while keeping it close to the original function in the Lp{\mathbb L}_p-(quasi)norm. It is well known that approximating a function by ppf's of minimal defect (splines) avoids introduction of artifacts which may be unrelated to the original function, thus it is always preferable. On the other hand, it is usually easier to construct constrained ppf's with as little requirements on smoothness as possible. Our results allow to obtain shape-preserving splines of minimal defect with equidistant or Chebyshev knots. The validity of the corresponding Jackson-type estimates for shape-preserving spline approximation is summarized, in particular we show, that the Lp{\mathbb L}_p-estimates, p1p\ge1, can be immediately derived from the L{\mathbb L}_\infty-estimates.

Keywords

Cite

@article{arxiv.1403.7983,
  title  = {Constrained Spline Smoothing},
  author = {K. Kopotun and D. Leviatan and A. Prymak},
  journal= {arXiv preprint arXiv:1403.7983},
  year   = {2014}
}
R2 v1 2026-06-22T03:39:02.436Z