Volume 65 | Issue 7 | Year 2019 | Article Id. IJMTT-V65I7P523 | DOI : https://doi.org/10.14445/22315373/IJMTT-V65I7P523
In this paper, the estimation of stress – strength reliability(R)is considered, when strength and stress variables are assumed to be independently distributed inverse exponential random variables. The maximum likelihood and Bayes estimators of R are obtained. Bayesian estimation of R is studied under non-informative and Gamma priors with different loss functions using Lindley’s approximation technique. The simulation study is performed, to compare estimator by evaluating mean squared errors.The real data analysis is conducted
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Parameshwar V. Pandit ,Kavitha, N, "Bayesian Analysisof Stress-Strength Reliability For Inverse Exponential Distribution Under Various Loss Functions," International Journal of Mathematics Trends and Technology (IJMTT), vol. 65, no. 7, pp. 162-170, 2019. Crossref, https://doi.org/10.14445/22315373/IJMTT-V65I7P523