Open Access
VOL. 77 | 2018 BM algorithms for noisy data and implicit regression modelling
Claudia Fassino, Hans Michael Möller, Eva Riccomagno

Editor(s) Takayuki Hibi

Adv. Stud. Pure Math., 2018: 87-107 (2018) DOI: 10.2969/aspm/07710087

Abstract

In this paper we consider the problem of finding a set of monomials $\mathcal O$ and a polynomial $f$ whose support is contained in $\mathcal O$, such that (1) $f$ is almost vanishing at a set of points $\mathbb X$ whose coordinates are not known exactly and (2) $\mathcal O$ exhibits structural stability, that is the model/design matrix associated to $\mathcal O$ is full rank for each set of points differing only slightly from $\mathbb X$. We review some numerical versions of the Buchberger-Möller (BM) algorithm for computing the set $\mathcal O$ and the polynomial $f$ and we present a variant, called LDP-LP, which integrates one of these methods with a classical statistical least squares algorithm for implicit regression from [1]. To illustrate the usefulness of these numerical BM algorithms, we review some of their application in the analyses of data sets for which standard techniques did not yield satisfactory results.

Information

Published: 1 January 2018
First available in Project Euclid: 21 September 2018

zbMATH: 07034249
MathSciNet: MR3839706

Digital Object Identifier: 10.2969/aspm/07710087

Subjects:
Primary: 13P , 62J , 65F
Secondary: 13P10 , 65F20

Keywords: Gröbner bases , least squares estimates , vanishing ideals

Rights: Copyright © 2018 Mathematical Society of Japan

PROCEEDINGS ARTICLE
21 PAGES


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