The inverse probability (IPW) and doubly robust (DR) estimators are often used to estimate the average causal effect (ATE), but are vulnerable to outliers. The IPW/DR median can be used for outlier-resistant estimation of the ATE, but the outlier resistance of the median is limited and it is not resistant enough for heavy contamination. We propose extensions of the IPW/DR estimators with density power weighting, which can eliminate the influence of outliers almost completely. The outlier resistance of the proposed estimators is evaluated through the unbiasedness of the estimating equations. Unlike the median-based methods, our estimators are resistant to outliers even under heavy contamination. Interestingly, the naive extension of the DR estimator requires bias correction to keep the double robustness even under the most tractable form of contamination. In addition, the proposed estimators are found to be highly resistant to outliers in more difficult settings where the contamination ratio depends on the covariates. The outlier resistance of our estimators from the viewpoint of the influence function is also favorable. Our theoretical results are verified via Monte Carlo simulations and real data analysis. The proposed methods were found to have more outlier resistance than the median-based methods and estimated the potential mean with a smaller error than the median-based methods.
翻译:逆概率(IPW)和双强度(DR)估计符通常用来估计平均因果关系(ATE),但容易受外部线的影响。IPW/DR中位值可以用来对ATE进行外部抗药性估计,但中位值的外部抗药性有限,对严重污染的抗药性也不够强。我们提议扩大具有密度功率的IPW/DR估计值,这几乎可以完全消除外部线的影响。拟议估计值的外部抗药性是通过估算方程的公正性来评估的。与中位法不同,我们的估计值对外部线的抗药性比较强,即使受到严重污染,我们的估计值中位值中位值中位值的中位值也是耐药性的。有趣的是,对DRS估计值的天性扩展要求有偏颇的偏颇性修正,以保持双倍强性,即使是在最易受污染的污染形式之下。此外,在更困难的环境中,建议的估算值对外部线的抗药性很强。我们估计师对真实影响方的偏差,而不是以中位值为偏差的分析。我们的理论结果比通过模拟方法比模拟得到更优。我们通过模拟方法得到更精确的模拟的。我们对中位分析。我们提出的理论结果比模拟数据比模拟方法得到更优。