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首页> 外文期刊>Journal of statistical computation and simulation >Corrected maximum likelihood estimators in heteroscedastic symmetric nonlinear models
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Corrected maximum likelihood estimators in heteroscedastic symmetric nonlinear models

机译:修正了异方差对称非线性模型中的最大似然估计

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摘要

In this article, we derive general matrix formulae for second-order biases of maximum likelihood estimators (MLEs) in a class of heteroscedastic symmetric nonlinear regression models, thus generalizing some results in the literature. This class of regression models includes all symmetric continuous distributions, and has a wide range of practical applications in various fields such as engineering, biology, medicine and economics, among others. The variety of distributions with different kurtosis coefficients than the normal may give more flexibility in the choice of an appropriate distribution, particularly to accommodate outlying and influential observations. We derive a joint iterative process for estimating the mean and dispersion parameters. We also present simulation studies for the biases of the MLEs.
机译:在本文中,我们推导了一类异方差对称非线性回归模型中最大似然估计器(MLE)的二阶偏差的通用矩阵公式,从而将一些结果推广到文献中。此类回归模型包括所有对称的连续分布,并且在工程,生物学,医学和经济学等各个领域具有广泛的实际应用。峰度系数与正常值不同的各种分布可能会在选择合适的分布时提供更大的灵活性,尤其是为了容纳离群的和有影响力的观测结果。我们推导了一个联合迭代过程来估计均值和弥散参数。我们还介绍了针对MLE偏差的仿真研究。

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