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On Monte Carlo methods for estimating the fisher information matrix in difficult problems

机译:关于难题中费舍尔信息矩阵估计的蒙特卡洛方法

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The Fisher information matrix summarizes the amount of information in a set of data relative to the quantities of interest and forms the basis for the Cramer-Rao (lower) bound on the uncertainty in an estimate. There are many applications of the information matrix in modeling, systems analysis, and estimation. This paper presents a resampling-based method for computing the information matrix together with some new theory related to efficient implementation. We show how certain properties associated with the likelihood function and the error in the estimates of the Hessian matrix can be exploited to improve the accuracy of the Monte Carlo-based estimate of the information matrix.
机译:Fisher信息矩阵总结了一组数据中与感兴趣的数量有关的信息量,并形成了基于不确定性的Cramer-Rao(下限)边界的基础。信息矩阵在建模,系统分析和估计中有许多应用。本文提出了一种基于重采样的信息矩阵计算方法,以及一些与有效实现有关的新理论。我们展示了如何利用与似然函数和Hessian矩阵的估计中的误差相关的某些属性来提高基于蒙特卡洛的信息矩阵估计的准确性。

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