Author/Authors :
Abbas, Kamran Department of Statistics - University of Azad Jammu and Kashmir - Muzaffarabad, Pakistan , Yousaf Abbasi, Nosheen Department of Statistics - Allama Iqbal Open University - Islamabad, Pakistan , Ali, Amjad Department of Statistics - Islamia College - Peshawar - Khyber Pakhtunkhwa, Pakistan , Ahmad Khan, Sajjad Department of Statistics - Islamia College - Peshawar - Khyber Pakhtunkhwa, Pakistan , Manzoor, Sadaf Department of Statistics - Islamia College - Peshawar - Khyber Pakhtunkhwa, Pakistan , Khalil, Alamgir Department of Statistics - University of Peshawar - Khyber Pakhtunkhwa, Pakistan , Khalil, Umair Department of Statistics - Abdul Wali Khan University - Mardan - Khyber Pakhtunkhwa, Pakistan , Muhammad Khan, Dost Department of Statistics - Abdul Wali Khan University - Mardan - Khyber Pakhtunkhwa, Pakistan , Hussain, Zamir National University of Sciences and Technology - Islamabad, Pakistan , Altaf, Muhammad Faculty of Basic Sciences and Humanities - University of Engineering and Technology - Taxila, Pakistan
Abstract :
The medical data are often filed for each patient in clinical studies in order to inform decision-making. Usually, medical data are
generally skewed to the right, and skewed distributions can be the appropriate candidates in making inferences using Bayesian
framework. Furthermore, the Bayesian estimators of skewed distribution can be used to tackle the problem of decision-making in
medicine and health management under uncertainty. For medical diagnosis, physician can use the Bayesian estimators to quantify
the effects of the evidence in increasing the probability that the patient has the particular disease considering the prior information. ,e present study focuses the development of Bayesian estimators for three-parameter Frechet distribution using
noninformative prior and gamma prior under LINEX (linear exponential) and general entropy (GE) loss functions. Since the
Bayesian estimators cannot be expressed in closed forms, approximate Bayesian estimates are discussed via Lindley’s approximation. ,ese results are compared with their maximum likelihood counterpart using Monte Carlo simulations. Our results
indicate that Bayesian estimators under general entropy loss function with noninformative prior (BGENP) provide the smallest
mean square error for all sample sizes and different values of parameters. Furthermore, a data set about the survival times of a
group of patients suffering from head and neck cancer is analyzed for illustration purposes.