A ridge-parameter approach to deconvolution
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Hall, Peter
Meister, Alexander
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Institute of Mathematical Statistics
Abstract
Kernel methods for deconvolution have attractive features, and prevail in the
literature. However, they have disadvantages, which include the fact that they
are usually suitable only for cases where the error distribution is infinitely
supported and its characteristic function does not ever vanish. Even in these
settings, optimal convergence rates are achieved by kernel estimators only when
the kernel is chosen to adapt to the unknown smoothness of the target
distribution. In this paper we suggest alternative ridge methods, not involving
kernels in any way. We show that ridge methods (a) do not require the
assumption that the error-distribution characteristic function is nonvanishing;
(b) adapt themselves remarkably well to the smoothness of the target density,
with the result that the degree of smoothness does not need to be directly
estimated; and (c) give optimal convergence rates in a broad range of settings.
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Annals of Statistics
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Open Access
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