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arxiv: 1503.05019 · v1 · pith:GSESBJ3Inew · submitted 2015-03-17 · 🧮 math.PR

Asymptotic equivalence for density estimation and gaussian white noise: An extension

classification 🧮 math.PR
keywords densitiesequivalenceextensionasymptoticdensityestimationgaussiannoise
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The aim of this paper is to present an extension of the well-known as-ymptotic equivalence between density estimation experiments and a Gaussian white noise model. Our extension consists in enlarging the nonparametric class of the admissible densities. More precisely, we propose a way to allow densities defined on any subinterval of R, and also some discontinuous or unbounded densities are considered (so long as the discontinuity and unboundedness patterns are somehow known a priori). The concept of equivalence that we shall adopt is in the sense of the Le Cam distance between statistical models. The results are constructive: all the asymptotic equivalences are established by constructing explicit Markov kernels.

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