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Inadmissibility of invariant estimator of function of scale parameter of several exponential distributions (2302.03420v2)

Published 7 Feb 2023 in math.ST and stat.TH

Abstract: In various applied areas such as reliability engineering, molecular biology, finance, etc., the measure of uncertainty of a probability distribution plays an important role. In the present work, we consider the estimation of a function of the scale parameter, namely entropy of many exponential distributions having unknown and unequal location parameters with a common scale parameter. For this estimation problem, we have considered bowl-shaped location invariant loss functions. The inadmissibility of the minimum risk invariant estimator (MRIE) is proved by proposing a non-smooth improved estimator. Also, we have obtained a smooth estimator which improves upon the MRIE. As an application, we have obtained explicit expressions of improved estimators for two well-known loss functions namely squared error loss and linex loss. Further, we have shown that these estimators can be derived for other important censored sampling schemes. At first, we obtained the results for the complete and i.i.d. sample. We have seen that the results can be applied for (i) record values, (ii) type-II censoring, and (iii) progressive Type-II censoring. Finally, a simulation study has been carried out to compare the risk performance of the proposed improved estimators.

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