Approximate MLEs of the parameters of location-scale models under type II censoring |
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Authors: | Ahmed Hossain Andrew R. Willan |
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Affiliation: | 1. Department of Public Health Sciences , University of Toronto , 155 College Street, Toronto, ON, M5T 3M7, Canada ahmed.hossain@utoronto.ca;3. SickKids Research Institute , 555 University Avenue, Toronto, ON, ON, M5G 1X8, Canada |
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Abstract: | Log-location-scale distributions are widely used parametric models that have fundamental importance in both parametric and semiparametric frameworks. The likelihood equations based on a Type II censored sample from location-scale distributions do not provide explicit solutions for the para-meters. Statistical software is widely available and is based on iterative methods (such as, Newton Raphson Algorithm, EM algorithm etc.), which require starting values near the global maximum. There are also many situations that the specialized software does not handle. This paper provides a method for determining explicit estimators for the location and scale parameters by approximating the likelihood function, where the method does not require any starting values. The performance of the proposed approximate method for the Weibull distribution and Log-Logistic distributions is compared with those based on iterative methods through the use of simulation studies for a wide range of sample size and Type II censoring schemes. Here we also examine the probability coverages of the pivotal quantities based on asymptotic normality. In addition, two examples are given. |
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Keywords: | Log-location scale distributions Type II censoring MLE Monte Carlo simulation Pivotal quantity |
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