Bias correction can often improve the finite sample performance of estimators. We show that the choice of bias correction method has no effect on the higher-order variance of semiparametrically efficient parametric estimators, so long as the estimate of the bias is asymptotically linear. It is also shown that bootstrap, jackknife, and analytical bias estimates are asymptotically linear for estimators with higher-order expansions of a standard form. In particular, we find that for a variety of estimators the straightforward bootstrap bias correction gives the same higher-order variance as more complicated analytical or jackknife bias corrections. In contrast, bias corrections that do not estimate the bias at the parametric rate, such as the split-sample jackknife, result in larger higher-order variances in the i.i.d. setting we focus on. For both a cross-sectional MLE and a panel model with individual fixed effects, we show that the split-sample jackknife has a higher-order variance term that is twice as large as that of the `leave-one-out' jackknife.
翻译:比亚斯校正往往可以提高测算员的有限样本性能。 我们发现,偏差校正方法的选择对半对称有效准参数测算员的较高级差异没有影响,只要对偏差的估计是线性微小的。 另外,还显示,对于测算员来说,单级扩展标准表的较高级的测算员来说,靴子、雀刀和分析偏差估计是线性偏差。特别是,我们发现,对于各种测算员来说,直截了当的靴子偏差校正给出的较高级差异与分析或千刀偏差校正相同。相比之下,不估计偏差率偏差的偏差更正,如断式正式麻雀刀等,导致i. d. 设置我们所关注的偏差较大。对于跨区MLE和具有个别固定效果的面板模型,我们发现,对分式的测距正式千刀的偏差值比“ 离心” 的偏差值要大一倍。