快速可靠的聚类鲁棒推断的Jackknife和Bootstrap方法

IF 2.3 3区 经济学 Q2 ECONOMICS
James G. MacKinnon, Morten Ørregaard Nielsen, Matthew D. Webb
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引用次数: 6

摘要

我们提供了计算上有吸引力的方法来获得基于jackknife的聚类-鲁棒方差矩阵估计(CRVEs),用于最小二乘估计的线性回归模型。我们还提出了野生集群引导的几个新变体,其中涉及这些crve,基于jackknife的引导数据生成过程,或两者兼而有之。大量的模拟实验表明,在现有方法不可信的情况下,例如当集群数量较少和/或集群大小变化很大时,新方法可以提供比现有方法更可靠的推断。三个实例说明了这些新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Fast and reliable jackknife and bootstrap methods for cluster-robust inference

Fast and reliable jackknife and bootstrap methods for cluster-robust inference

We provide computationally attractive methods to obtain jackknife-based cluster-robust variance matrix estimators (CRVEs) for linear regression models estimated by least squares. We also propose several new variants of the wild cluster bootstrap, which involve these CRVEs, jackknife-based bootstrap data-generating processes, or both. Extensive simulation experiments suggest that the new methods can provide much more reliable inferences than existing ones in cases where the latter are not trustworthy, such as when the number of clusters is small and/or cluster sizes vary substantially. Three empirical examples illustrate the new methods.

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来源期刊
CiteScore
3.70
自引率
4.80%
发文量
63
期刊介绍: The Journal of Applied Econometrics is an international journal published bi-monthly, plus 1 additional issue (total 7 issues). It aims to publish articles of high quality dealing with the application of existing as well as new econometric techniques to a wide variety of problems in economics and related subjects, covering topics in measurement, estimation, testing, forecasting, and policy analysis. The emphasis is on the careful and rigorous application of econometric techniques and the appropriate interpretation of the results. The economic content of the articles is stressed. A special feature of the Journal is its emphasis on the replicability of results by other researchers. To achieve this aim, authors are expected to make available a complete set of the data used as well as any specialised computer programs employed through a readily accessible medium, preferably in a machine-readable form. The use of microcomputers in applied research and transferability of data is emphasised. The Journal also features occasional sections of short papers re-evaluating previously published papers. The intention of the Journal of Applied Econometrics is to provide an outlet for innovative, quantitative research in economics which cuts across areas of specialisation, involves transferable techniques, and is easily replicable by other researchers. Contributions that introduce statistical methods that are applicable to a variety of economic problems are actively encouraged. The Journal also aims to publish review and survey articles that make recent developments in the field of theoretical and applied econometrics more readily accessible to applied economists in general.
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