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Bayesian Estimation of the Scale Parameter of Inverse Weibull Distribution under the Asymmetric Loss Functions

DOI: 10.1155/2013/890914

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Abstract:

This paper proposes different methods of estimating the scale parameter in the inverse Weibull distribution (IWD). Specifically, the maximum likelihood estimator of the scale parameter in IWD is introduced. We then derived the Bayes estimators for the scale parameter in IWD by considering quasi, gamma, and uniform priors distributions under the square error, entropy, and precautionary loss functions. Finally, the different proposed estimators have been compared by the extensive simulation studies in corresponding the mean square errors and the evolution of risk functions. 1. Introduction It is well known that the Weibull distribution is one of the most popular distributions in the lifetime data analyzing. The main reason is that one can create a wide variety of shapes with varying levels of its parameters. Therefore, during the past decades, extensive work has been done on this distribution in both the frequentist and Bayesian points of view; see, for example, the excellent reviews by Johnson et al. [1] and Kundu [2]. However, the Weibull distribution has two parameters, and in many practical applications, one or both of them might be unknown. To estimate them, we may use common approaches (see, e.g., Nordman and Meeker [3]). Moreover, it is clear through the distribution of Weibull that the Weibull probability density function (PDF) can be decreasing (or increasing) or unimodal, depending on the shape of distribution parameters. Due to the flexibility of the Weibull PDF, the inverse Weibull distribution (IWD) has been extensively employed in situation where a monotone data set is available (REF). Furthermore, if the empirical studies indicate that the Weibull PDF might be unimodal, then the inverse Weibull distribution (IWD) may be an appropriate model (Kundu [2]). As a definition, if a positive random variable has the Weibull distribution with the following PDF: then the random variable has the IWD with the PDF of the following form: where is called scale parameter and is called shape parameter of this family. It also follows from (2) that the cumulative distribution function of can be obtained: IWD plays an important role in many applications, including the dynamic components of diesel engines and several data sets such as the times to breakdown of an insulating fluid subject to the action of a constant tension (see Drapella [4], Jiang et al. [5], and Nelson [6] for more practical applications). For instance, Calabria and Pulcini [7] provide an interpretation of the IWD in the context of the load-strength relationship for a component. Maswadah [8]

References

[1]  N. L. Johnson, S. Kotz, and N. Balakrishnan, Continuous Univariate Distribution, John Wiley & Sons, New York, NY, USA, 2nd edition, 1995.
[2]  D. Kundu, “Bayesian inference and life testing plan for the Weibull distribution in presence of progressive censoring,” Technometrics, vol. 50, no. 2, pp. 144–154, 2008.
[3]  D. J. Nordman and W. Q. Meeker, “Weibull prediction intervals for a future number of failures,” Technometrics, vol. 44, no. 1, pp. 15–23, 2002.
[4]  A. Drapella, “The complementary Weibull distribution: unknown or just forgotten?” Quality and Reliability Engineering International, vol. 9, pp. 383–385, 1993.
[5]  R. Jiang, D. N. P. Murthy, and P. Ji, “Models involving two inverse Weibull distributions,” Reliability Engineering and System Safety, vol. 73, no. 1, pp. 73–81, 2001.
[6]  W. B. Nelson, Applied Life Data Analysis, John Wiley & Sons, New York, NY, USA, 1982.
[7]  R. Calabria and G. Pulcini, “On the maximum likelihood and least-squares estimation in the Inverse Weibull distributions,” Statistical Application, vol. 2, no. 1, pp. 53–66, 1990.
[8]  M. Maswadah, “Conditional confidence interval estimation for the inverse Weibull distribution based on censored generalized order statistics,” Journal of Statistical Computation and Simulation, vol. 73, no. 12, pp. 887–898, 2003.
[9]  R. Dumonceaux and C. E. Antle, “Discrimination between the lognormal and Weibull distribution,” Technometrics, vol. 15, pp. 923–926, 1973.
[10]  D. N. P. Murthy, M. Xie, and R. Jiang, Weibull Model, John Wiley & Sons, New York, NY, USA, 2004.
[11]  R. Calabria and G. Pulcini, “An engineering approach to Bayes estimation for the Weibull distribution,” Microelectronics Reliability, vol. 34, no. 5, pp. 789–802, 1994.
[12]  A. P. Basu and N. Ebrahimi, “Bayesian approach to life testing and reliability estimation using asymmetric loss function,” Journal of Statistical Planning and Inference, vol. 29, no. 1-2, pp. 21–31, 1992.
[13]  J. O. Berger, Statistical Decision Theory, Foundation, Concepts and Method, Springer, New York, NY, USA, 1985.
[14]  J. G. Norstr?m, “The use of precautionary loss functions in risk analysis,” IEEE Transactions on Reliability, vol. 45, no. 3, pp. 400–403, 1996.
[15]  D. K. Dey, M. Ghosh, and C. Srinivasan, “Simultaneous estimation of parameters under entropy loss,” Journal of Statistical Planning and Inference, vol. 15, pp. 347–363, 1987.
[16]  D. K. Dey and P.-S. L. Liu, “On comparison of estimators in a generalized life model,” Microelectronics Reliability, vol. 32, no. 1-2, pp. 207–221, 1992.

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