Maximum likelihood estimation in a Weibull regression model with type-1 censoring: a Monte Carlo study |
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Authors: | T Elperin I Gertsbakh |
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Affiliation: | 1. Department of Mechanical Engineering , Ben-Gurion University , P.O.Box 653, Beer-Sheva, Israel;2. Department of Mathematics and Computer Science , Ben-Ben-Gurion University , P.O.Box 653, Beer-Sheva, Israel |
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Abstract: | Results of the Monte Carlo study of the performance of a maximum likelihood estimation in a Weibull parametric regression model with two explanatory variables are presented. One simulation run contained 1000 samples censored on the average by the amount of 0-30%. Each simulatedsample was generated in a form of two-factor two-level balanced experiment. The confidence intervals were computed using the large-sample normal approximation via the matrix of observed information. For small sample sizes the estimates of the scale parameter b of the loglifetime were significantly negatively biased, which resulted in a poor quality of confidence intervals for b and the low-level quantiles. All estimators improved their quality when the nominal value of b decreased. A moderate amount of censoring improved the quality of point and confidence estimation. The reparametrization b 7 produced rather accurate confidence intervals. Exact confidence intervals for b in case of non-censoring were obtained using the pivotal quantity b/b. |
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Keywords: | Parametric Regression Point and Confidence Estimation Normal Large-Sample Approximation |
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