Title
Families of non-linear subdivision schemes for scattered data fitting and their non-tensor product extensions.
Abstract
In this article, families of non-linear subdivision schemes are presented that are based on univariate polynomials up to degree three. These families of schemes are constructed by using dynamic iterative re-weighed least squares method. These schemes are suitable for fitting noisy data with outliers. The codes are designed in a Python environment to numerically fit the given data points. Although these schemes are non-interpolatory, but have the ability to preserve the shape of the initial polygon in case of non-noisy initial data. The numerical examples illustrate that the schemes constructed by non-linear polynomials give better performance than the schemes that are constructed by linear polynomials (Mustafa et al., 2015). Moreover, the numerical examples show that these schemes have the ability to reproduce polynomials and do not cause over and under fitting of the data. Furthermore, families of non-linear bivariate subdivision schemes are also presented that are based on linear and non-linear bivariate polynomials.
Year
DOI
Venue
2019
10.1016/j.amc.2018.12.075
Applied Mathematics and Computation
Keywords
Field
DocType
Subdivision scheme,Iterative re-weighted least squares method,ℓ1-regression,Noisy data,Outlier,Over and under fitting
Tensor product,Discrete mathematics,Nonlinear system,Algebra,Curve fitting,Subdivision,Mathematics
Journal
Volume
ISSN
Citations 
359
0096-3003
0
PageRank 
References 
Authors
0.34
0
2
Name
Order
Citations
PageRank
Ghulam Mustafa17416.17
Rabia Hameed221.06