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Porträtt av Krzysztof Podgórski. Foto.

Krzysztof Podgórski

Prefekt Statistiska institutionen, Professor

Porträtt av Krzysztof Podgórski. Foto.

Spline-based methods for functional data on multivariate domains

Författare

  • Rani Basna
  • Hiba Nassar
  • Krzysztof Podgórski

Summary, in English

Functional data analysis is typically performed in two steps: first, functionally representing discrete observations, and then applying functional methods to the so-represented data. The initial choice of a functional representation may have a significant impact on the second phase of the analysis, as shown in recent research, where data-driven spline bases outperformed the predefined rigid choice of functional representation. The method chooses an initial functional basis by an efficient placement of the knots using a simple machine-learning algorithm. The knot selection approach does not apply directly when the data are defined on domains of a higher dimension than one such as, for example, images. The reason is that in higher dimensions the convenient and numerically efficient spline spaces use tensor bases that require knots located on a lattice. This fundamentally limits flexible knot placement which is fundamental for the approach. The goal of this research is two-fold: first, to propose modified approaches that circumvent the issue by coding the irregular knot selection into the topology of the spaces of tensor-based splines; second, to apply the approach to a classification problem workflow for functional data that utilizes knot selection. The performance is preliminarily accessed on a benchmark dataset and shown to be comparable to or better than the previous methods.

Avdelning/ar

  • Geriatrik
  • Statistiska institutionen

Publiceringsår

2024-12

Språk

Engelska

Publikation/Tidskrift/Serie

Journal of Mathematics in Industry

Volym

14

Avvikelse

1

Dokumenttyp

Artikel i tidskrift

Förlag

Springer

Ämne

  • Computer Sciences

Nyckelord

  • Binary regression trees
  • Image classification
  • Orthonormal bases
  • Splinets
  • Tensor spline bases

Aktiv

Published

Forskningsgrupp

  • Geriatrics

ISBN/ISSN/Övrigt

  • ISSN: 2190-5983