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Kernel regression estimation for random fields

  • Université de Rennes 2
  • Université de Lille
  • Indiana University Bloomington

Résultats de recherche: Contribution à un journalArticleRevue par des pairs

Résumé

Consider a stationary random field { Xn } indexed by N-dimensional lattice points, where { Xn } takes values in Rd. An important problem in spatial statistics is the estimation of the regression of { Xn } on the values of the random field at surrounding sites, say, Xn1, ..., Xnℓ. Note that (Xn1, ..., Xnℓ) is a ℓ d-dimensional vector. Assume the existence of the regression function r (x) = E { φ{symbol} (Xn) | (Xn1, ..., Xnℓ) = x },where φ{symbol} is a continuous real-valued function which is not necessarily bounded, and x ∈ Rℓ d. Kernel-type estimators of the regression function r (x) are investigated. They are shown to converge uniformly on compact sets under general conditions. In addition, they can attain the optimal rates of convergence in L. The results hold for a large class of spatial processes.

langue originaleAnglais
Pages (de - à)778-798
Nombre de pages21
journalJournal of Statistical Planning and Inference
Volume137
Numéro de publication3
Les DOIs
étatPublié - 1 mars 2007
Modification externeOui

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