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Empirical likelihood confidence intervals for complex sampling designs

机译:复杂的经验似然置信区间 抽样设计

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摘要

We define an empirical likelihood approach which gives consistent design-based confidence intervals which can be calculated without the need of variance estimates, design effects, resampling, joint inclusion probabilities and linearization, even when the point estimator is not linear. It can be used to construct confidence intervals for a large class of sampling designs and estimators which are solutions of estimating equations. It can be used for means, regressions coefficients, quantiles, totals or counts even when the population size is unknown. It can be used with large sampling fractions and naturally includes calibration constraints. It can be viewed as an extension of the empirical likelihood approach to complex survey data. This approach is computationally simpler than the pseudoempirical likelihood and the bootstrap approaches. The simulation study shows that the confidence interval proposed may give better coverages than the confidence intervals based on linearization, bootstrap and pseudoempirical likelihood. Our simulation study shows that, under complex sampling designs, standard confidence intervals based on normality may have poor coverages, because point estimators may not follow a normal sampling distribution and their variance estimators may be biased.
机译:我们定义了一种经验似然方法,该方法可提供一致的基于设计的置信区间,即使点估计量不是线性的,也无需方差估计,设计效果,重采样,联合包含概率和线性化即可进行计算。它可用于构造大量类别的抽样设计和估计量的置信区间,这是估计方程的解。即使人口规模未知,也可以用于均值,回归系数,分位数,总数或计数。它可以用于较大的采样比例,并且自然包括校准约束。它可以看作是经验似然法对复杂调查数据的扩展。这种方法在计算上比伪经验似然法和自举方法更简单。仿真研究表明,与基于线性化,自举和伪经验似然性的置信区间相比,建议的置信区间可以提供更好的覆盖范围。我们的模拟研究表明,在复杂的采样设计下,基于正态性的标准置信区间可能覆盖范围较差,因为点估计量可能不遵循正态采样分布,并且其方差估计量可能存在偏差。

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  • 年度 2016
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  • 正文语种 {"code":"en","name":"English","id":9}
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