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Level Robust Methods Based on the Least Squares Regression Estimator

机译:基于最小二乘回归估计的水平稳健方法

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摘要

Heteroscedastic consistent covariance matrix (HCCM) estimators provide ways for testing hypotheses about regression coefficients under heteroscedasticity. Recent studies have found that methods combining the HCCM-based test statistic with the wild bootstrap consistently perform better than non-bootstrap HCCM-based methods (Davidson & Flachaire, 2008; Flachaire, 2005; Godfrey, 2006). This finding is more closely examined by considering a broader range of situations which were not included in any of the previous studies. In addition, the latest version of HCCM, HC5 (Cribari-Neto, et al., 2007), is evaluated.
机译:异方差一致协方差矩阵(HCCM)估计器提供了检验异方差下回归系数假设的方法。最近的研究发现,将基于HCCM的测试统计信息与野生自举相结合的方法始终比基于非自举的HCCM的方法表现更好(Davidson&Flachaire,2008; Flachaire,2005; Godfrey,2006)。通过考虑更广泛的情况来更仔细地检查此发现,而以前的任何研究均未包括这些情况。此外,还评估了最新版的HCCM HC5(Cribari-Neto等人,2007年)。

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