Estimating a uniform distribution when data are measured with a normal additive error with unknown variance

Author: Bensic Mirta   Sabo Kristian  

Publisher: Taylor & Francis Ltd

ISSN: 0233-1888

Source: Statistics, Vol.44, Iss.3, 2010-06, pp. : 235-246

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Abstract

The problem of estimating the width of a symmetric uniform distribution on the line together with the error variance, when data are measured with normal additive error, is considered. The main purpose is to analyse the maximum-likelihood (ML) estimator and to compare it with the moment-method estimator. It is shown that this two-parameter model is regular so that the ML estimator is asymptotically efficient. Necessary and sufficient conditions are given for the existence of the ML estimator. As numerical problems are known to frequently occur while computing the ML estimator in this model, useful suggestions for computing the ML estimator are also given.