Multiplicative deconvolution under unknown error distribution

Abstract

We consider a multiplicative deconvolution problem, in which the density ff or the survival function SXS^X of a strictly positive random variable XX is estimated nonparametrically based on an i.i.d. sample from a noisy observation Y=Xβ‹…UY = X\cdot U of XX. The multiplicative measurement error UU is supposed to be independent of XX. The objective of this work is to construct a fully data-driven estimation procedure when the error density fUf^U is unknown. We assume that in addition to the i.i.d. sample from YY, we have at our disposal an additional i.i.d. sample drawn independently from the error distribution. The proposed estimation procedure combines the estimation of the Mellin transformation of the density ff and a regularisation of the inverse of the Mellin transform by a spectral cut-off. The derived risk bounds and oracle-type inequalities cover both - the estimation of the density ff as well as the survival function SXS^X. The main issue addressed in this work is the data-driven choice of the cut-off parameter using a model selection approach. We discuss conditions under which the fully data-driven estimator can attain the oracle-risk up to a constant without any previous knowledge of the error distribution. We compute convergences rates under classical smoothness assumptions. We illustrate the estimation strategy by a simulation study with different choices of distributions

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