A New Estimator for Standard Errors with Few Unbalanced Clusters

IF 1.1 Q3 ECONOMICS Econometrics Pub Date : 2022-01-21 DOI:10.3390/econometrics10010006
Gianmaria Niccodemi, T. Wansbeek
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引用次数: 1

Abstract

In linear regression analysis, the estimator of the variance of the estimator of the regression coefficients should take into account the clustered nature of the data, if present, since using the standard textbook formula will in that case lead to a severe downward bias in the standard errors. This idea of a cluster-robust variance estimator (CRVE) generalizes to clusters the classical heteroskedasticity-robust estimator. Its justification is asymptotic in the number of clusters. Although an improvement, a considerable bias could remain when the number of clusters is low, the more so when regressors are correlated within cluster. In order to address these issues, two improved methods were proposed; one method, which we call CR2VE, was based on biased reduced linearization, while the other, CR3VE, can be seen as a jackknife estimator. The latter is unbiased under very strict conditions, in particular equal cluster size. To relax this condition, we introduce in this paper CR3VE-λ, a generalization of CR3VE where the cluster size is allowed to vary freely between clusters. We illustrate the performance of CR3VE-λ through simulations and we show that, especially when cluster sizes vary widely, it can outperform the other commonly used estimators.
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一种具有少量不平衡簇的标准误差估计方法
在线性回归分析中,回归系数估计量的方差估计量应考虑数据的聚类性质(如果存在),因为在这种情况下,使用标准教科书公式将导致标准误差的严重向下偏差。这种聚类鲁棒方差估计器(CRVE)的思想将经典的异方差鲁棒估计器推广到聚类中。它的正当性在簇的数量上是渐进的。尽管这是一种改进,但当聚类数量较低时,仍可能存在相当大的偏差,当回归因子在聚类内相关时,偏差就越大。为了解决这些问题,提出了两种改进的方法;一种方法,我们称之为CR2VE,是基于有偏简化线性化的,而另一种方法CR3VE,可以看作是一种jacknife估计器。后者在非常严格的条件下是无偏的,特别是在相同的簇大小下。为了放松这一条件,我们在本文中引入了CR3VE-λ,这是CR3VE的一个推广,其中允许簇大小在簇之间自由变化。我们通过仿真说明了CR3VE-λ的性能,并表明,特别是当聚类大小变化很大时,它可以优于其他常用的估计量。
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来源期刊
Econometrics
Econometrics Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
2.40
自引率
20.00%
发文量
30
审稿时长
11 weeks
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