On asymptotically efficient maximum likelihood estimation of linear functionals in Laplace measurement error models

02/02/2019
by   Catia Scricciolo, et al.
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Maximum likelihood estimation of linear functionals in the inverse problem of deconvolution is considered. Given observations of a random sample from a distribution P_0≡ P_F_0 indexed by a (potentially infinite-dimensional) parameter F_0, which is the distribution of the latent variable in a standard additive Laplace measurement error model, one wants to estimate a linear functional of F_0. Asymptotically efficient maximum likelihood estimation (MLE) of integral linear functionals of the mixing distribution F_0 in a convolution model with the Laplace kernel density is investigated. Situations are distinguished in which the functional of interest can be consistently estimated at n^-1/2-rate by the plug-in MLE, which is asymptotically normal and efficient, in the sense of achieving the variance lower bound, from those in which no integral linear functional can be estimated at parametric rate, which precludes any possibility for asymptotic efficiency. The √(n)-convergence of the MLE, valid in the case of a degenerate mixing distribution at a single location point, fails in general, as does asymptotic normality. It is shown that there exists no regular estimator sequence for integral linear functionals of the mixing distribution that, when recentered about the estimand and √(n)-rescaled, is asymptotically efficient, viz., has Gaussian limit distribution with minimum variance. One can thus only expect estimation with some slower rate and, often, with a non-Gaussian limit distribution.

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