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Kernel density estimation for stationary random fields

13 September 2011
M. E. Machkouri
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Abstract

In this paper, under natural and easily verifiable conditions, we prove the L1\mathbb{L}^1L1-convergence and the asymptotic normality of the Parzen-Rosenblatt density estimator for stationary random fields of the form Xk=g(εk−s,s∈Zd)X_k = g(\varepsilon_{k-s}, s \in \Z^d)Xk​=g(εk−s​,s∈Zd), k∈Zdk\in\Z^dk∈Zd, where (εi)i∈Zd(\varepsilon_i)_{i\in\Z^d}(εi​)i∈Zd​ are i.i.d real random variables and ggg is a measurable function defined on RZd\R^{\Z^d}RZd. Such kind of processes provides a general framework for stationary ergodic random fields. A Berry-Esseen's type central limit theorem is also given for the considered estimator.

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