Classical and Bayesian estimation of Kumaraswamy distribution based on type II hybrid censored data
Abstract
Kumaraswamy parameters when the data are type II hybrid
censored. The maximum likelihood estimates (MLE) and its asymptotic variance-covariance matrix are obtained. The asymptotic variances and covariances of the MLEs are used to construct approximate confidence
intervals. In addition, by using the parametric bootstrap method, the construction
of confidence intervals for the unknown parameter is discussed. Further, the Bayesian estimation of the parameters under
squared error loss function is discussed. Based on type II hybrid
censored data, the Bayes
estimate of the parameters cannot be obtained explicitly; therefore,
an approximation method, namely Tierney and Kadane's approximation, is used to compute the
Bayes estimates of the parameters. Monte Carlo
simulations are performed to compare the performances of the different methods,
and one real data set is analyzed for illustrative purposes.
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