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Optimal prediction in loglinear models

机译:对数线性模型中的最佳预测

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摘要

This paper introduces a Laplace inversion technique for deriving unbiased predictors in exponential families. This general technique is applied to derive the exact optimal unbiased predictor in loglinear models with Gaussian disturbances under quadratic loss. An exact unbiased estimator for its variance is also derived. The result generalizes earlier work and unifies expressions in terms of a simple hypergeometric function which has a number of advantages. Nonlinear models rarely admit exact solutions and we therefore compare the exact predictor with other predictors commonly used in nonlinear models. The naive predictor which is biased and inconsistent, can be best in terms of mean squared error, even for sample sizes of up to 40.
机译:本文介绍了用于导出指数族中无偏预测变量的拉普拉斯反演技术。将该通用技术应用于在二次损失下具有高斯扰动的对数线性模型中,得出精确的最佳无偏预测因子。还推导了其方差的精确无偏估计量。结果概括了早期工作,并根据具有许多优点的简单超几何函数统一了表达式。非线性模型很少接受精确解,因此我们将精确预测器与非线性模型中常用的其他预测器进行比较。有偏见和不一致的幼稚预测器即使在样本大小不超过40的情况下,在均方误差方面也可能是最好的。

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