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首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >Higher-order asymptotic normality of approximations to the modified signed likelihood ratio statistic for regular models
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Higher-order asymptotic normality of approximations to the modified signed likelihood ratio statistic for regular models

机译:常规模型的修正正负似然比统计量的近似值的高阶渐近正态性

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摘要

Approximations to the modified signed likelihood ratio statistic are asymptotically standard normal with error of order n(-1), where n is the sample size. Proofs of this fact generally require that the sufficient statistic of the model be written as ((theta) over cap, a), where theta is the maximum likelihood estimator of the parameter theta of the model and a is an ancillary statistic. This condition is very difficult or impossible to verify for many models. However, calculation of the statistics themselves does not require this condition. The goal of this paper is to provide conditions under which these statistics are asymptotically normally distributed to order n(-1) without making any assumption about the sufficient statistic of the model.
机译:修正的带符号似然比统计量的近似值是渐近标准正态,误差为n(-1)阶,其中n是样本大小。该事实的证明通常要求将模型的足够统计量写为(θover cap,a),其中theta是模型参数theta的最大似然估计量,而a是辅助统计量。对于许多模型来说,很难验证或无法验证此条件。但是,统计信息本身的计算不需要此条件。本文的目的是提供条件,在这些条件下这些统计量渐近正态分布为n(-1),而无需对模型的充分统计量进行任何假设。

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