Preliminary results in comparing the expected and observed Fisher information for maximum likelihood estimates

X. Cao, J. Spall
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Abstract

Confidence intervals for the maximum likelihood estimates (MLEs) are commonly used in statistical inference. To accurately construct such confidence intervals, one typically needs to know the distribution of the MLE. Standard statistical theory says normalized MLE is asymptotically normal with mean zero and variance being a function of the Fisher Information Matrix (FIM) at the unknown parameter. Two common estimates for the variance of MLE are the observed FIM (same as Hessian of negative log-likelihood) and the expected FIM, both of which are evaluated at the MLE given sample data. We show that, under reasonable conditions, the expected FIM tends to outperform the observed FIM under a mean-squared error criterion. This result suggests that, under certain conditions, the expected FIM is a better estimate for the variance of MLE when used in confidence interval calculations.
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对最大似然估计的预期和观察费雪信息进行比较的初步结果
最大似然估计的置信区间是统计推断中常用的一种方法。为了准确地构建这样的置信区间,通常需要知道最大似然值的分布。标准统计理论认为,归一化最大似然是渐近正态的,均值为零,方差是未知参数处Fisher信息矩阵(FIM)的函数。MLE方差的两种常见估计是观察到的FIM(与负对数似然的Hessian相同)和期望的FIM,两者都在给定样本数据的MLE上进行评估。我们表明,在合理的条件下,在均方误差准则下,预期的FIM倾向于优于观察到的FIM。这一结果表明,在一定条件下,在置信区间计算中使用期望FIM可以更好地估计MLE的方差。
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