A parametric mixture model of three different distributions is proposed to analyse heterogeneous survival data.The maximum likelihood estimators of the postulated parametric mixture model are estimated by applying an Expectation Maximization Algorithm (EM) scheme.The simulations are performed by generating data, sampled from a population of three component parametric mixture of three different distributions. The parameters estimated by the proposed EM Algorithm scheme are close to the parameters of the postulated model.To investigate the consistency and stability of the EM scheme, the simulations are repeated several times. The repetitions of the simulation gave parameters closer to the values of postulated models, with relatively small s...
Simulation studies are essential for understanding and evaluating both current and new statistical m...
A general method for deriving new survival distributions from old is presented. This yields a class...
Survival analysis is a widely used method to establish a connection between a time to event outcome ...
Aims: In this study a survival mixture model of three components is considered to analyse survival d...
In this study survival mixture model of three components was proposed for the analysis of heterogene...
Previous studies showed that two components of survival mixture model performed better than pure cla...
In this paper, we examine mixture models to model heterogeneous survival data. Mixture of Gamma dist...
In this paper we propose a mixture of two different distributions such as Exponential-Gamma, Exponen...
In this paper we propose a mixture of two different distributions such as Exponential-Gamma, Exponen...
Frailty mixture survival models are statistical models which allow for a cured fraction and frailty....
In the pharmaceutical industry, cost-effectiveness analysis is an important step in the development ...
Heterogeneity exists on a data set when samples from different classes are merged into the data set....
In this article we use Bayesian methods to fit a Weibull mixture model with an unknown number of com...
WOS: 000284410300004In this article, we propose a mixture of extended exponential-geometric distribu...
Survival models are being widely applied to the engineering field to model time-to-event data once c...
Simulation studies are essential for understanding and evaluating both current and new statistical m...
A general method for deriving new survival distributions from old is presented. This yields a class...
Survival analysis is a widely used method to establish a connection between a time to event outcome ...
Aims: In this study a survival mixture model of three components is considered to analyse survival d...
In this study survival mixture model of three components was proposed for the analysis of heterogene...
Previous studies showed that two components of survival mixture model performed better than pure cla...
In this paper, we examine mixture models to model heterogeneous survival data. Mixture of Gamma dist...
In this paper we propose a mixture of two different distributions such as Exponential-Gamma, Exponen...
In this paper we propose a mixture of two different distributions such as Exponential-Gamma, Exponen...
Frailty mixture survival models are statistical models which allow for a cured fraction and frailty....
In the pharmaceutical industry, cost-effectiveness analysis is an important step in the development ...
Heterogeneity exists on a data set when samples from different classes are merged into the data set....
In this article we use Bayesian methods to fit a Weibull mixture model with an unknown number of com...
WOS: 000284410300004In this article, we propose a mixture of extended exponential-geometric distribu...
Survival models are being widely applied to the engineering field to model time-to-event data once c...
Simulation studies are essential for understanding and evaluating both current and new statistical m...
A general method for deriving new survival distributions from old is presented. This yields a class...
Survival analysis is a widely used method to establish a connection between a time to event outcome ...