Abstract Simultaneous estimation based on empirical likelihood and general maximum likelihood estimation
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Simultaneous estimation based on empirical likelihood and general maximum likelihood estimation

机译:基于经验似然和一般最大似然估计的同时估计

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AbstractOne typical problem in simultaneous estimation of mean values is estimating means of normal distributions, however when normality or any other distribution is not specified, more robust estimation procedures are demanded. A new estimation procedure is proposed based on empirical likelihood which does not request any specific distributional assumption. The new idea is based on incorporating empirical likelihood with general maximum likelihood estimation. One well-known nonparametric estimator, the linear empirical Bayes estimator, can be interpreted as an estimator based on empirical likelihood under some framework and it is shown that the proposed procedure can improve the linear empirical Bayes estimator. Numerical studies are presented to compare the proposed estimator with some existing estimators. The proposed estimator is applied to the problem of estimating mean values corresponding to high valued observations. Simulations and real data example of gene expression are provided.]]>
机译:<![cdata [ Abstract 同时估计平均值的一个典型问题是估计正常分布的装置,但是当常态或任何其他分布未指定时,更强大的估计需要程序。基于未要求任何特定分布假设的经验似然提出了一种新的估算程序。新思路是基于包含一般最大似然估计的经验似然。一个众所周知的非参数估计器,线性经验贝叶斯估计器,可以根据一些框架的经验可能性被解释为估计器,并显示所提出的程序可以改善线性经验贝叶斯估计器。提出了数值研究以将建议的估算者与一些现有估算者进行比较。所提出的估计器适用于估计与高价值观测相对应的平均值的问题。提供了基因表达的模拟和实际数据示例。 ]]>

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