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Confidence Intervals for the Population Mean Tailored to Small Sample Sizes, with Applications to Survey Sampling

机译:专为小样本量定制的总体均值的置信区间及其在调查抽样中的应用

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The validity of standard confidence intervals constructed in survey sampling is based on the central limit theorem. For small sample sizes, the central limit theorem may give a poor approximation, resulting in confidence intervals that are misleading. We discuss this issue and propose methods for constructing confidence intervals for the population mean tailored to small sample sizes. nnWe present a simple approach for constructing confidence intervals for the population mean based on tail bounds for the sample mean that are correct for all sample sizes. Bernstein's inequality provides one such tail bound. The resulting confidence intervals have guaranteed coverage probability under much weaker assumptions than are required for standard methods. A drawback of this approach, as we show, is that these confidence intervals are often quite wide. In response to this, we present a method for constructing much narrower confidence intervals, which are better suited for practical applications, and that are still more robust than confidence intervals based on standard methods, when dealing with small sample sizes. We show how to extend our approaches to much more general estimation problems than estimating the sample mean. We describe how these methods can be used to obtain more reliable confidence intervals in survey sampling. As a concrete example, we construct confidence intervals using our methods for the number of violent deaths between March 2003 and July 2006 in Iraq, based on data from the study ``Mortality after the 2003 invasion of Iraq: A cross sectional cluster sample survey,'' by Burnham et al. (2006).
机译:在调查抽样中构建的标准置信区间的有效性基于中心极限定理。对于小样本量,中心极限定理可能会给出较差的近似值,从而导致置信区间具有误导性。我们讨论了这个问题,并提出了为小样本量身定制的总体均值构建置信区间的方法。 nn我们提出了一种简单的方法,根据样本均值的尾部边界构造总体均值的置信区间,该均值对所有样本量均正确。伯恩斯坦的不等式提供了一个这样的尾部约束。所得的置信区间在比标准方法所需的假设弱得多的假设下,具有保证的覆盖率。如我们所示,这种方法的缺点是这些置信区间通常很宽。响应于此,我们提出了一种构建更窄置信区间的方法,该置信区间更适合于实际应用,并且在处理小样本量时,比基于标准方法的置信区间还更健壮。我们展示了如何将我们的方法扩展到比估计样本均值更广泛的估计问题。我们描述了如何使用这些方法在调查抽样中获得更可靠的置信区间。举一个具体的例子,我们根据``2003年伊拉克入侵后的死亡率:横断面整群抽样调查''研究得出的数据,使用我们的方法构建了2003年3月至2006年7月伊拉克暴力死亡人数的置信区间。伯纳姆等人。 (2006)。

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