估计员
数学
统计
最大似然
最大似然序列估计
自适应估计器
估计理论
蒙特卡罗方法
分布(数学)
估计
物流配送
逻辑回归
工程类
数学分析
系统工程
作者
Xiaobing Zheng,Jyun‐You Chiang,Tzong‐Ru Tsai,Shuai Wang
标识
DOI:10.1016/j.cie.2021.107188
摘要
The Log-logistic distribution has successfully earned attention in practical applications due to its good statistical properties. Because the traditional maximum likelihood estimators of the Log-logistic distribution parameters do not have an explicit form and are biased when the sample size is small. Therefore, the estimation and prediction of the failure rate is not well. In this study, we study the quality of the maximum likelihood, asymptotic maximum likelihood and bias-corrected maximum likelihood methods, and propose a smooth adaptive estimation method for estimating the Log-logistic distribution parameters. To reduce the bias of the asymptotic maximum likelihood and smooth adaptive estimators of the Log-logistic distribution parameters, the bias-corrected method is used to improve the asymptotic maximum likelihood and smooth adaptive estimation methods. Two new bias-corrected estimation methods are also proposed to obtain reliable estimates of the Log-logistic distribution parameters. An intensive Monte Carlo simulation study is conducted to evaluate the performance of these estimation methods. Simulation results show that the smooth adaptive and two new bias-corrected estimation methods are more competitive than other competitors. Finally, two real example is used for illustrating the applications of the smooth adaptive, CAML and CSA estimation methods.
科研通智能强力驱动
Strongly Powered by AbleSci AI