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
Link To Document :
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