Bookbot

ORTHONORMAL SERIES ESTIMATORS

Auteurs

Paramètres

  • 304pages
  • 11 heures de lecture

En savoir plus sur le livre

Focusing on advanced statistical methods, this book explores the approximation and estimation of nonparametric functions through projections onto orthonormal function bases. It introduces series estimators that enhance density estimators for various complex models, including mixture, deconvolution, and semi-parametric models. The authors demonstrate optimal convergence rates in Hilbert spaces and analyze mean square errors relative to basis size, utilizing cross-validation for consistent estimation. Additionally, wavelet estimators are examined within these frameworks, providing a comprehensive approach to modern data analysis techniques.

Achat du livre

ORTHONORMAL SERIES ESTIMATORS, Odile Pons

Langue
Année de publication
2020
product-detail.submit-box.info.binding
(rigide)
Nous vous informerons par e-mail dès que nous l’aurons retrouvé.

Modes de paiement

Personne n'a encore évalué .Évaluer

Titre
ORTHONORMAL SERIES ESTIMATORS
Langue
Anglais
Auteurs
Odile Pons
Publié
2020
Format
rigide
Pages
304
ISBN13
9789811210686
Séries
Description
Focusing on advanced statistical methods, this book explores the approximation and estimation of nonparametric functions through projections onto orthonormal function bases. It introduces series estimators that enhance density estimators for various complex models, including mixture, deconvolution, and semi-parametric models. The authors demonstrate optimal convergence rates in Hilbert spaces and analyze mean square errors relative to basis size, utilizing cross-validation for consistent estimation. Additionally, wavelet estimators are examined within these frameworks, providing a comprehensive approach to modern data analysis techniques.