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Liczba wyników
2022 | 26 | nr 2 | 30--46
Tytuł artykułu

Unform in Bandwith of the Conditional Distribution Function with Functional Explanatory Variable: The Case of Spatial Data with the K Nearest Neighbour Method

Autorzy
Warianty tytułu
Warunkowa funkcja rozkładu z funkcjonalną zmienną wyjaśniającą: przypadek danych przestrzennych i metody k-najbliższego sąsiada
Języki publikacji
EN
Abstrakty
EN
In this paper the author introduced a new conditional distribution function estimator, in short (cdf), when the co-variables are functional in nature. This estimator is a mix of both procedures the k Nearest Neighbour method and the spatial functional estimation.(original abstract)
W artykule opisano nowy estymator funkcji rozkładu warunkowego (CDF) używany, gdy współzmienne mają charakter funkcjonalny. Ten estymator jest połączeniem obu procedur: k-najbliższego sąsiada i przestrzennej estymacji funkcjonalnej.(abstrakt oryginalny)
Rocznik
Tom
26
Numer
Strony
30--46
Opis fizyczny
Twórcy
  • University Djillali LIABES of Sidi Bel Abbes, Algeria
Bibliografia
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  • Bouabsa, W. (2021). Nonparametric relative error estimation via functional regressor by the k Nearest neighbors smoothing under truncation random. Applications and Applied Mathematics: An International Journal (AAM), 16(1), 97-116.
  • Burba, F., Ferraty, F., and Vieu, P. (2009). k-nearest neighbour method in functional nonparametric regression. J. Nonparametr. Stat., 21(4), 453-469.
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  • Dony, J., and Einmahl, U. (2009). Uniformin Bandwidth consistency of Kernel regression estimators at a fixed point. High Dimensional Probability. V: The Luminy Volume, 53(5), 308-325.
  • Einmahl, U., and Mason, D. (2005). Uniform in bandwidth consistency of Kernel-type function estimators. The Annals of Statistics, 33(3), 1380-403.
  • El Machkouri, M., and Stoica, R. (2010). Asymptotic normality of kernel estimates in a regression model for random fields. J Nonparametric Stat., 22(15), 955-971.
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  • Ferraty, F., Rabhi, A. and Vieu, P. (2008). Estimation non-parametrique de la fonction de hasard avec variable explicative fonctionnelle. Rev. Roumaine Math. Pures Appl., 53(15), 1-18.
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  • Laksaci, A., and Mechab, B. (2010). Estimation non parametrique de la fonction de hasard avec variable explicative fonctionelle: cas des données spaciales. Rev. Roumaine Math. Pures Appl., 55(1), 35-51.
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Typ dokumentu
Bibliografia
Identyfikatory
Identyfikator YADDA
bwmeta1.element.ekon-element-000171652732

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