Title of article
Asymptotic Efficiencies of the MLE Based on Bivariate Record Values from Bivariate Normal Distribution
Author/Authors
Amini, Morteza university of tehran - School of Mathematics, Statistics and Computer Science, College of Science - Department of Statistics, تهران, ايران , Ahmadi, Jafar ferdowsi university of mashhad - Department of Statistics, مشهد, ايران
From page
235
To page
252
Abstract
Maximum likelihood (ML) estimation based on bivariate record data is considered as the general inference problem. Assume that the process of observing k records is repeated m times, independently. The asymptotic properties including consistency and asymptotic normality of the Maximum Likelihood (ML) estimates of parameters of the underlying distribution is then established, when m is large enough. The bivariate normal distribution is considered as an highly applicable example in order to estimate the parameter θ = (μ1, σ1, μ2, σ2) by ML method of estimation based on mk bivariate record data. Asymptotic variances of the ML estimators are calculated by deriving the Fisher information matrix about θ contained in the vector of the first k bivariate record data. As another application, we concerned the problem of “breaking boards” of Glick (1978, Amer. Math. Monthly, 85, 2-26) by considering three different sampling schemes of breaking boards and we computed the relative asymptotic efficiencies of ML estimators based on these three types of data.
Keywords
Additivity , bivariate distribution , Fisher information matrix , inverse sampling , Jensen’s inequality
Journal title
Journal of the Iranian Statistical Society (JIRSS)
Journal title
Journal of the Iranian Statistical Society (JIRSS)
Record number
2578602
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