File(s) not publicly available
Smoothing Lipschitz functions
This paper describes a new approach to multivariate scattered data smoothing. It is assumed that the data are generated by a Lipschitz continuous function f, and include random noise to be filtered out. The proposed approach uses known, or estimated value of the Lipschitz constant of f, and forces the data to be consistent with the Lipschitz properties of f. Depending on the assumptions about the distribution of the random noise, smoothing is reduced to a standard quadratic or a linear programming problem. We discuss an efficient algorithm which eliminates the redundant inequality constraints. Numerical experiments illustrate applicability and efficiency of the method. This approach provides an efficient new tool of multivariate scattered data approximation.
History
Journal
Optimization methods and softwareVolume
22Issue
6Pagination
901 - 916Publisher
Taylor & FrancisLocation
Abingdon, EnglandPublisher DOI
ISSN
1055-6788eISSN
1029-4937Language
engNotes
This is an electronic version of an article published in Optimization methods and software, vol. 22, no. 6, pp. 901-916. Optimization Methods and Software is available online at: http://www.informaworld.com/openurl?genre=article&issn=1055-6788&volume=22&issue=6&spage=901Publication classification
C1 Refereed article in a scholarly journal; C Journal articleCopyright notice
2007, Taylor & FrancisUsage metrics
Keywords
scattered data approximationLipschitz approximationuniform approximationconstrained approximationmultivariate approximationsmoothingScience & TechnologyTechnologyPhysical SciencesComputer Science, Software EngineeringOperations Research & Management ScienceMathematics, AppliedComputer ScienceMathematicsComputation Theory and Mathematics