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학술논문Communications for Statistical Applications and Methods2012.01 발행

Nonparametric M-Estimation for Functional Spatial Data

Nonparametric M-Estimation for Functional Spatial Data

Mohammed Kadi Attouch(University Djillali Liab`es); Benamar Chouaf(University Djillali Liab`es); Ali Laksaci(University Djillali Liab`es)

19권 1호, 193~211쪽

초록

This paper deals with robust nonparametric regression analysis when the regressors are functional random fields. More precisely, we consider $Z_i=(X_i,Y_i)$, $i{\in}\mathbb{N}^N$ be a $\mathcal{F}{\times}\mathbb{R}$-valued measurable strictly stationary spatial process, where $\mathcal{F}$ is a semi-metric space and we study the spatial interaction of $X_i$ and $Y_i$ via the robust estimation for the regression function. We propose a family of robust nonparametric estimators for regression function based on the kernel method. The main result of this work is the establishment of the asymptotic normality of these estimators, under some general mixing and small ball probability conditions.

Abstract

This paper deals with robust nonparametric regression analysis when the regressors are functional random fields. More precisely, we consider $Z_i=(X_i,Y_i)$, $i{\in}\mathbb{N}^N$ be a $\mathcal{F}{\times}\mathbb{R}$-valued measurable strictly stationary spatial process, where $\mathcal{F}$ is a semi-metric space and we study the spatial interaction of $X_i$ and $Y_i$ via the robust estimation for the regression function. We propose a family of robust nonparametric estimators for regression function based on the kernel method. The main result of this work is the establishment of the asymptotic normality of these estimators, under some general mixing and small ball probability conditions.

발행기관:
한국통계학회
분류:
통계학

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Nonparametric M-Estimation for Functional Spatial Data | Communications for Statistical Applications and Methods 2012 | AskLaw | 애스크로 AI