Minimum variance quadratic unbiased estimators as a tool to identify compound normal distributions

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摘要

We derive the minimum variance quadratic unbiased estimator (MIVQUE) of the variance of the components of a random vector having a compound normal distribution (CND). We show that the MIVQUE converges in probability to a random variable whose distribution is essentially the mixing distribution characterising the CND. This fact is very important, because the MIVQUE allows us to make out the signature of a particular CND, and notably allows us to check if an hypothesis of normality for multivariate observations y1,…,yM is plausible.

论文关键词:Normal linear regression,Compound normal distributions,Quadratic estimation,Error components model

论文评审过程:Received 31 August 1997, Revised 7 September 1998, Available online 9 April 1999.

论文官网地址:https://doi.org/10.1016/S0377-0427(98)00228-3