A robust functional partial least squares for scalar-on-multiple-function regression

Ufuk Beyaztas*, Han Lin Shang

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

11 Citations (Scopus)
37 Downloads (Pure)

Abstract

The scalar-on-function regression model has become a popular analysis tool to explore the relationship between a scalar response and multiple functional predictors. Most of the existing approaches to estimate this model are based on the least-squares estimator, which can be seriously affected by outliers in empirical datasets. When outliers are present in the data, it is known that the least-squares-based estimates may not be reliable. This paper proposes a robust functional partial least squares method, allowing a robust estimate of the regression coefficients in a scalar-on-multiple-function regression model. In our method, the functional partial least squares components are computed via the partial robust M-regression. The predictive performance of the proposed method is evaluated using several Monte Carlo experiments and two chemometric datasets: glucose concentration spectrometric data and sugar process data. The results produced by the proposed method are compared favorably with some of the classical functional or multivariate partial least squares and functional principal component analysis methods.
Original languageEnglish
Article numbere3394
Pages (from-to)1-19
Number of pages19
JournalJournal of Chemometrics
Volume36
Issue number4
Early online date21 Mar 2022
DOIs
Publication statusPublished - Apr 2022

Keywords

  • SIMPLS
  • partial robust M-regression
  • robust estimation
  • spectrometric data

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