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Dr. Ahmed Z. Afify :: Publications:

Title:
A new two-parameter Burr-Hatke distribution: properties and Bayesian and non-Bayesian inference with applications.
Authors: Afify, A. Z., Aljohani, H. M., Alghamdi, A. S., Gemeay, A. M. and Sarg, A. M.
Year: 2021
Keywords: Not Available
Journal: Journal of Mathematics
Volume: 2021
Issue: Not Available
Pages: 1-16
Publisher: Not Available
Local/International: International
Paper Link:
Full paper Not Available
Supplementary materials Not Available
Abstract:

This article introduces a two-parameter flexible extension of the Burr-Hatke distribution using the inverse-power transformation. The failure rate of the new distribution can be an increasing shape, a decreasing shape, or an upside-down bathtub shape. Some of its mathematical properties are calculated. Ten estimation methods, including classical and Bayesian techniques, are discussed to estimate the model parameters. The Bayes estimators for the unknown parameters, based on the squared error, general entropy, and linear exponential loss functions, are provided. The ranking and behavior of these methods are assessed by simulation results with their partial and overall ranks. Finally, the flexibility of the proposed distribution is illustrated empirically using two real-life datasets. The analyzed data shows that the introduced distribution provides a superior fit than some important competing distributions such as the Weibull, Fréchet, gamma, exponential, inverse log-logistic, inverse weighted Lindley, inverse Pareto, inverse Nakagami-M, and Burr-Hatke distributions.

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