Mathematics (Jun 2020)

Unbiased Least-Squares Modelling

  • Marta Gatto,
  • Fabio Marcuzzi

DOI
https://doi.org/10.3390/math8060982
Journal volume & issue
Vol. 8, no. 6
p. 982

Abstract

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In this paper we analyze the bias in a general linear least-squares parameter estimation problem, when it is caused by deterministic variables that have not been included in the model. We propose a method to substantially reduce this bias, under the hypothesis that some a-priori information on the magnitude of the modelled and unmodelled components of the model is known. We call this method Unbiased Least-Squares (ULS) parameter estimation and present here its essential properties and some numerical results on an applied example.

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