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Corrected estimates for Student t regression models with unknown degrees of freedom

机译:修正了自由度未知的Student t回归模型的估计

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摘要

We discuss analytical bias corrections for maximum likelihood estimators in a regression model where the errors are Student-f distributed with unknown degrees of freedom. We propose a reparameterization of the number of degrees of freedom that produces a bias corrected estimator with very good small sample properties. This unknown number of degrees of freedom is assumed greater than 1, to guarantee a bounded likelihood function. We discuss some special cases of the general model and present some simulations which show that the corrected estimates perform better than their corresponding uncorrected versions in finite samples.
机译:我们讨论了回归模型中最大似然估计的分析偏差校正,其中误差为自由度未知的Student-f分布。我们建议对自由度数进行重新参数化,以产生具有非常好的小样本属性的偏差校正估计器。假定这个未知的自由度数大于1,以保证有界似然函数。我们讨论了通用模型的一些特殊情况,并提供了一些模拟结果,这些结果表明校正后的估计比有限样本中对应的未校正版本的性能更好。

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