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Nonparametric density estimation for stationary processes under multiplicative measurement errors

20 March 2024
Duc Trong Dang
Van Ha Hoang
Phuc Hung Thai
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Abstract

This paper focuses on estimating the invariant density function fXf_XfX​ of the strongly mixing stationary process XtX_tXt​ in the multiplicative measurement errors model Yt=XtUtY_t = X_t U_tYt​=Xt​Ut​, where UtU_tUt​ is also a strongly mixing stationary process. We propose a novel approach to handle non-independent data, typical in real-world scenarios. For instance, data collected from various groups may exhibit interdependencies within each group, resembling data generated from mmm-dependent stationary processes, a subset of stationary processes. This study extends the applicability of the model Yt=XtUtY_t = X_t U_tYt​=Xt​Ut​ to diverse scientific domains dealing with complex dependent data. The paper outlines our estimation techniques, discusses convergence rates, establishes a lower bound on the minimax risk, and demonstrates the asymptotic normality of the estimator for fXf_XfX​ under smooth error distributions. Through examples and simulations, we showcase the efficacy of our estimator. The paper concludes by providing proofs for the presented theoretical results.v

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