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Robust Reliability Estimation for Lindley Distribution—A Probability Integral Transform Statistical Approach

Muhammad Aslam Mohd Safari, Nurulkamal Masseran, Muhammad Hilmi Abdul Majid

2020Mathematics12 citationsDOIOpen Access PDF

Abstract

In the modeling and analysis of reliability data via the Lindley distribution, the maximum likelihood estimator is the most commonly used for parameter estimation. However, the maximum likelihood estimator is highly sensitive to the presence of outliers. In this paper, based on the probability integral transform statistic, a robust and efficient estimator of the parameter of the Lindley distribution is proposed. We investigate the relative efficiency of the new estimator compared to that of the maximum likelihood estimator, as well as its robustness based on the breakdown point and influence function. It is found that this new estimator provides reasonable protection against outliers while also being simple to compute. Using a Monte Carlo simulation, we compare the performance of the new estimator and several well-known methods, including the maximum likelihood, ordinary least-squares and weighted least-squares methods in the absence and presence of outliers. The results reveal that the new estimator is highly competitive with the maximum likelihood estimator in the absence of outliers and outperforms the other methods in the presence of outliers. Finally, we conduct a statistical analysis of four reliability data sets, the results of which support the simulation results.

Topics & Concepts

EstimatorOutlierMathematicsTrimmed estimatorM-estimatorStatisticsInvariant estimatorOrdinary least squaresMinimum-variance unbiased estimatorEfficient estimatorMinimax estimatorApplied mathematicsStatistical Distribution Estimation and ApplicationsProbabilistic and Robust Engineering DesignAdvanced Statistical Methods and Models