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基于自举法的协方差分析模型的小样本性能及潜在假设,适用于可能存在异方差和非正态误差的情况。

Small-sample performance and underlying assumptions of a bootstrap-based inference method for a general analysis of covariance model with possibly heteroskedastic and nonnormal errors.

机构信息

Department of Mathematics, Paris Lodron University, Salzburg, Austria.

Spinal Cord Injury and Tissue Regeneration Centre Salzburg, Paracelsus Medical University, Salzburg, Austria.

出版信息

Stat Methods Med Res. 2019 Dec;28(12):3808-3821. doi: 10.1177/0962280218817796. Epub 2019 Jan 2.

Abstract

It is well known that the standard F test is severely affected by heteroskedasticity in unbalanced analysis of covariance models. Currently available potential remedies for such a scenario are based on heteroskedasticity-consistent covariance matrix estimation (HCCME). However, the HCCME approach tends to be liberal in small samples. Therefore, in the present paper, we propose a combination of HCCME and a wild bootstrap technique, with the aim of improving the small-sample performance. We precisely state a set of assumptions for the general analysis of covariance model and discuss their practical interpretation in detail, since this issue may have been somewhat neglected in applied research so far. We prove that these assumptions are sufficient to ensure the asymptotic validity of the combined HCCME-wild bootstrap analysis of covariance. The results of our simulation study indicate that our proposed test remedies the problems of the analysis of covariance F test and its heteroskedasticity-consistent alternatives in small to moderate sample size scenarios. Our test only requires very mild conditions, thus being applicable in a broad range of real-life settings, as illustrated by the detailed discussion of a dataset from preclinical research on spinal cord injury. Our proposed method is ready-to-use and allows for valid hypothesis testing in frequently encountered settings (e.g., comparing group means while adjusting for baseline measurements in a randomized controlled clinical trial).

摘要

众所周知,在不平衡协方差分析模型中,标准 F 检验受到异方差的严重影响。目前针对这种情况的潜在补救方法基于异方差一致协方差矩阵估计(HCCME)。然而,HCCME 方法在小样本中往往过于宽松。因此,在本文中,我们提出了 HCCME 和野生引导技术的组合,旨在提高小样本的性能。我们准确地陈述了协方差分析模型的一组假设,并详细讨论了它们的实际解释,因为到目前为止,这个问题在应用研究中可能被忽视了。我们证明了这些假设足以确保 HCCME-野生引导协方差分析的渐近有效性。我们的模拟研究结果表明,我们提出的检验方法可以解决协方差 F 检验及其在小到中等样本量情况下的异方差一致替代方法的问题。我们的检验只需要非常温和的条件,因此适用于广泛的实际应用场景,如对脊髓损伤临床前研究数据集的详细讨论。我们提出的方法是即用型的,并允许在常见的情况下进行有效的假设检验(例如,在随机对照临床试验中,在调整基线测量的情况下比较组均值)。

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