The problem of classification into two exponential populations with a common location parameter under the type-II censoring scheme is considered. Estimators improving upon the MLEs and the UMVUEs are used to construct classification rules for classifying an observation as well as a group of observations. Further, a rule-based on the generalized likelihood ratio test, has also been proposed. More importantly, a detailed and in-depth simulation study has been carried out in order to compare the probability of correct classification as well as expected probability of correct classification numerically. Finally, a real life example is presented in order to illustrate the applicability of the proposed classification rules, under type-II censorin...
In this paper, the estimation problem (point and interval) is studied under the exponentiated expone...
[[abstract]]The interval estimation of the scale parameter and the joint confidence region of the pa...
This thesis focuses on approximating misclassification errors of likelihood-based classifiers consid...
[[abstract]]Some experimenters sometimes want to identify the worst and best Populations for the Two...
When Type-II hybrid censoring is used on two samples in a combined manner, the exact inference for t...
When the available sample is multiply Type-II censored, the maximum likelihood estimators of the loc...
In this paper, Bayesian and non-Bayesian estimators have been obtained for two generalized exponenti...
Statistical inference of an exponential distribution model, using pro-gressively Type-II censored da...
[[abstract]]Exact inference for the location and scale parameters as well as prediction intervals fo...
In this paper, maximum likelihood estimation have been obtained for two Weibull populations under jo...
Based on two independent samples from Weinman multivariate exponential distributions with unknown sc...
The Bayesian interval estimation of the scale parameter for two-parameter exponential distribution i...
AbstractIn normal classification analysis, there may be cases where the population distributions are...
In this paper, we discuss estimation in two-sample problems where each sample is subjected to type I...
In this paper, we derive approximate moments of progressively type-II right censored order statistic...
In this paper, the estimation problem (point and interval) is studied under the exponentiated expone...
[[abstract]]The interval estimation of the scale parameter and the joint confidence region of the pa...
This thesis focuses on approximating misclassification errors of likelihood-based classifiers consid...
[[abstract]]Some experimenters sometimes want to identify the worst and best Populations for the Two...
When Type-II hybrid censoring is used on two samples in a combined manner, the exact inference for t...
When the available sample is multiply Type-II censored, the maximum likelihood estimators of the loc...
In this paper, Bayesian and non-Bayesian estimators have been obtained for two generalized exponenti...
Statistical inference of an exponential distribution model, using pro-gressively Type-II censored da...
[[abstract]]Exact inference for the location and scale parameters as well as prediction intervals fo...
In this paper, maximum likelihood estimation have been obtained for two Weibull populations under jo...
Based on two independent samples from Weinman multivariate exponential distributions with unknown sc...
The Bayesian interval estimation of the scale parameter for two-parameter exponential distribution i...
AbstractIn normal classification analysis, there may be cases where the population distributions are...
In this paper, we discuss estimation in two-sample problems where each sample is subjected to type I...
In this paper, we derive approximate moments of progressively type-II right censored order statistic...
In this paper, the estimation problem (point and interval) is studied under the exponentiated expone...
[[abstract]]The interval estimation of the scale parameter and the joint confidence region of the pa...
This thesis focuses on approximating misclassification errors of likelihood-based classifiers consid...