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Saddlepoint-Based Bootstrap Inference for Quadratic Estimating Equations

机译:二次估计方程的基于鞍点的自举推理

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We propose an easy to implement method for making small sample parametric inference about the root of an estimating equation expressible as a quadratic form in normal random variables. It is based on saddlepoint approximations to the distribution of the estimating equation whose unique root is a parameter's maximum likelihood estimator (MLE), while substituting conditional MLEs for the remaining (nuisance) parameters. Monotoncity of the estimating equation in its parameter argument enables us to relate these approximations to those for the estimator of interest. The proposed method is equivalent to a parametric bootstrap percentile approach where Monte Carlo simulation is replaced by saddlepoint approximation. It finds applications in many areas of statistics including, nonlinear regression, time series analysis, inference on ratios of regression parameters in linear models and calibration. We demonstrate the method in the context of some classical examples from nonlinear regression models and ratios of regression parameter problems. Simulation results for these show that the proposed method, apart from being generally easier to implement, yields confidence intervals with lengths and coverage probabilities that compare favourably with those obtained from several competing methods proposed in the literature over the past half-century.
机译:我们提出了一种易于实现的方法,可用于对估计方程的根进行小样本参数推断,将其表示为普通随机变量中的二次形式。它基于鞍点近似估计方程的分布,该估计方程的唯一根是参数的最大似然估计器(MLE),同时用条件MLE代替其余(有害的)参数。估计方程在其参数参数中的单调性使我们能够将这些近似值与感兴趣的估计值相关联。所提出的方法等效于参数自举百分位数方法,其中将蒙特卡罗模拟替换为鞍点逼近。它在统计的许多领域都有应用,包括非线性回归,时间序列分析,线性模型中回归参数的比率推断和校准。我们在非线性回归模型和回归参数问题比率的一些经典示例的背景下演示了该方法。这些方法的仿真结果表明,所提出的方法除了通常更易于实施之外,还产生了具有长度和覆盖范围概率的置信区间,与在过去半个世纪中从文献中提出的几种竞争方法所获得的结果相比,具有优势。

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