[[abstract]]We consider the problem of making statistical inference on unknown parameters of a lognormal distribution under the assumption that samples are progressively censored. The maximum likelihood estimates (MLEs) are obtained by using the expectation-maximization algorithm. The observed and expected Fisher information matrices are provided as well. Approximate MLEs of unknown parameters are also obtained. Bayes and generalized estimates are derived under squared error loss function. We compute these estimates using Lindley's method as well as importance sampling method. Highest posterior density interval and asymptotic interval estimates are constructed for unknown parameters. A simulation study is conducted to compare proposed estim...
The problems that occur in analyzing survival models based on parametric distributions require param...
Recently Jammalamadaka and Mangalam (2003) introduced a general censoring scheme called the “middle-...
Abstract In this paper, we study non-Bayesian and Bayesian estimation of parameters for the Kumarasw...
[[abstract]]In this paper, we consider the problems of Bayesian estimation and prediction for lognor...
The paper addresses the problem of estimation of the model parameters of the logistic exponential di...
Point estimation of the parameters of the lognormal distribution with censored data is considered. T...
[[abstract]]We discuss the maximum likelihood estimates (MLEs) of the parameters of the log-gamma di...
In this paper we develop approximate Bayes estimators of the scale parameter of the logistic distrib...
In this paper we develop approximate Bayes estimators of the parameters,reliability, and hazard rate...
We consider the estimation problem of the Lindley distribution based on progressive type-II censored...
The two most common censoring schemes used in life testing experiments are Type-I and Type-II censor...
The parameters, reliability, and hazard rate functions of the Unit-Lindley distribution based on ada...
The Lomax distribution has been used as a statistical model in several fields, especially for busine...
The point and interval estimations for the unknown parameters of an exponentiated half-logistic dist...
Generalized distributions have become widely used in applications recently. They are very flexible i...
The problems that occur in analyzing survival models based on parametric distributions require param...
Recently Jammalamadaka and Mangalam (2003) introduced a general censoring scheme called the “middle-...
Abstract In this paper, we study non-Bayesian and Bayesian estimation of parameters for the Kumarasw...
[[abstract]]In this paper, we consider the problems of Bayesian estimation and prediction for lognor...
The paper addresses the problem of estimation of the model parameters of the logistic exponential di...
Point estimation of the parameters of the lognormal distribution with censored data is considered. T...
[[abstract]]We discuss the maximum likelihood estimates (MLEs) of the parameters of the log-gamma di...
In this paper we develop approximate Bayes estimators of the scale parameter of the logistic distrib...
In this paper we develop approximate Bayes estimators of the parameters,reliability, and hazard rate...
We consider the estimation problem of the Lindley distribution based on progressive type-II censored...
The two most common censoring schemes used in life testing experiments are Type-I and Type-II censor...
The parameters, reliability, and hazard rate functions of the Unit-Lindley distribution based on ada...
The Lomax distribution has been used as a statistical model in several fields, especially for busine...
The point and interval estimations for the unknown parameters of an exponentiated half-logistic dist...
Generalized distributions have become widely used in applications recently. They are very flexible i...
The problems that occur in analyzing survival models based on parametric distributions require param...
Recently Jammalamadaka and Mangalam (2003) introduced a general censoring scheme called the “middle-...
Abstract In this paper, we study non-Bayesian and Bayesian estimation of parameters for the Kumarasw...