This paper studies a discriminant problem of location-scale family in case of prediction from type II censored samples. Three model selection approaches and two types of predictors are, respectively, proposed to predict the future order statistics from censored data when the best underlying distribution is not clear with several candidates. Two members in the location-scale family, the normal distribution and smallest extreme value distribution, are used as candidates to illustrate the best model competition for the underlying distribution via using the proposed prediction methods. The performance of correct and incorrect selections under correct specification and misspecification is evaluated via using Monte Carlo simulations. Simulation r...
In this paper, we propose a new maximum likelihood predictor (type II MLP) for a future random varia...
This paper treats a statistical prediction problem under the ordered parameters. An improvement on t...
This correspondence addresses the problem of order determination of autoregressive models by Bayesia...
This paper studies a discriminant problem of location-scale family in case of prediction from type I...
This article proposes a simple method of constructing predictors of future order statistics based on...
This article provides a method using the probability papers for point and interval predictions of fu...
The main focus of the dissertation is on point prediction in models of ordered data comprised by the...
This paper focuses on the Bayesian prediction of kth ordered future observations modelled by a two-c...
AbstractThe competing risks model may be of great importance for an investigator in medical studies ...
Abstract. In this paper, we discuss different predictors of times to failure of units censored in mu...
The principle of type II maximum likelihood is applied to the prediction of a future random variable...
Two-sample point prediction is considered for a two-parameter exponential distribution. Several poin...
Under adaptive progressive Type-II censoring schemes, order restricted inference based on competing ...
This paper describes the results of a study of the maximum likelihood predictor of future order stat...
WOS: 000407117100025In this study, estimation and prediction problems for the Burr type III distribu...
In this paper, we propose a new maximum likelihood predictor (type II MLP) for a future random varia...
This paper treats a statistical prediction problem under the ordered parameters. An improvement on t...
This correspondence addresses the problem of order determination of autoregressive models by Bayesia...
This paper studies a discriminant problem of location-scale family in case of prediction from type I...
This article proposes a simple method of constructing predictors of future order statistics based on...
This article provides a method using the probability papers for point and interval predictions of fu...
The main focus of the dissertation is on point prediction in models of ordered data comprised by the...
This paper focuses on the Bayesian prediction of kth ordered future observations modelled by a two-c...
AbstractThe competing risks model may be of great importance for an investigator in medical studies ...
Abstract. In this paper, we discuss different predictors of times to failure of units censored in mu...
The principle of type II maximum likelihood is applied to the prediction of a future random variable...
Two-sample point prediction is considered for a two-parameter exponential distribution. Several poin...
Under adaptive progressive Type-II censoring schemes, order restricted inference based on competing ...
This paper describes the results of a study of the maximum likelihood predictor of future order stat...
WOS: 000407117100025In this study, estimation and prediction problems for the Burr type III distribu...
In this paper, we propose a new maximum likelihood predictor (type II MLP) for a future random varia...
This paper treats a statistical prediction problem under the ordered parameters. An improvement on t...
This correspondence addresses the problem of order determination of autoregressive models by Bayesia...