We consider the median regression model X k = θ( x k ) + ξ k , where the unknown signal θ : [0,1] → ℝ, is assumed to belong to a Hölder smoothness class, the ξ k s are independent, but not necessarily identically distributed, noises with zero median. The distribution of the noise is assumed to be unknown and satisfying some weak conditions. Possible noise distributions may have heavy tails, so that, for example, the expectation of noises does not exist. This implies that in general linear methods (for example, kernel method) cannot be applied directly in this situation. On the basis of a preliminary recursive estimator, we construct certain variables Y k s, called pseudovalues which do not depend on the noise distribution, and derive an asymptotic expansion (uniform over a certain class of noise distributions): Y k = θ ( x k ) + ∊ k + r k , where ∊ k s are binary random variables and the remainder terms r k s are negligible. This expansion mimics the nonparametric regression model with binary noises. In so doing, we reduce our original observation model with “bad” (heavy-tailed) noises effectively to the nonparametric regression model with binary noises.
Contents
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Requires Authentication UnlicensedOn asymptotic expansion of pseudovalues in nonparametric median regressionLicensedSeptember 25, 2009
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Requires Authentication UnlicensedOn second order minimax estimation of invariant density for ergodic diffusionLicensedSeptember 25, 2009
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Requires Authentication UnlicensedSainte-Laguë’s chi-square divergence for the rounding of probabilities and its convergence to a stable lawLicensedSeptember 25, 2009
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Requires Authentication UnlicensedEstimation of linear functionals of bivariate distributions with parametric marginalsLicensedSeptember 25, 2009
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Requires Authentication UnlicensedA remark on the quickest detection problemsLicensedSeptember 25, 2009