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Linear approximate ML estimation in scaled Type I generalized logistic distribution based on Type-II censored samples
Authors:A Vasudeva Rao  P Sitaramacharyulu  M Chenchu Ramaiah
Institution:1. Department of Statistics, Acharya Nagarjuna University, Guntur, AP, India;2. Department of Community Medicine, Katuri Medical College, Guntur, AP, India;3. Bank of America, Raheja IT Park, Madapur, Hyderabad, India
Abstract:The scaled (two-parameter) Type I generalized logistic distribution (GLD) is considered with the known shape parameter. The ML method does not yield an explicit estimator for the scale parameter even in complete samples. In this article, we therefore construct a new linear estimator for scale parameter, based on complete and doubly Type-II censored samples, by making linear approximations to the intractable terms of the likelihood equation using least-squares (LS) method, a new approach of linearization. We call this as linear approximate maximum likelihood estimator (LAMLE). We also construct LAMLE based on Taylor series method of linear approximation and found that this estimator is slightly biased than that based on the LS method. A Monte Carlo simulation is used to investigate the performance of LAMLE and found that it is almost as efficient as MLE, though biased than MLE. We also compare unbiased LAMLE with BLUE based on the exact variances of the estimators and interestingly this new unbiased LAMLE is found just as efficient as the BLUE in both complete and Type-II censored samples. Since MLE is known as asymptotically unbiased, in large samples we compare unbiased LAMLE with MLE and found that this estimator is almost as efficient as MLE. We have also discussed interval estimation of the scale parameter from complete and Type-II censored samples. Finally, we present some numerical examples to illustrate the construction of the new estimators developed here.
Keywords:Doubly type-II censoring  Least-squares method  Linear approximate maximum likelihood estimator  Type I generalized logistic distribution  Unbiased linear approximate maximum likelihood estimator  
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