Examination of Entropy balancing technique for estimating some standard measures of treatment effects: A simulation study

IF 0.6 Q4 STATISTICS & PROBABILITY Electronic Journal of Applied Statistical Analysis Pub Date : 2019-10-14 DOI:10.1285/I20705948V12N2P491
L. Amusa, T. Zewotir, D. North
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引用次数: 12

Abstract

In observational studies, propensity score weighting methods are regarded as the conventional standard for estimating the effects of treatments on outcomes. We introduce entropy balancing, which despite its excellent conceptual properties, has been under-utilized in the applied studies. Using an extensive series of Monte Carlo simulations, we evaluated the performance of entropy balancing, in estimating difference in means, marginal odds ratios, rate ratios and hazard ratios. The performance of entropy balancing was relatively compared with that of inverse probability of treatment weighting using the propensity score. We found that entropy balancing outperformed the IPW method in estimating difference in means, marginal odds ratios, and hazard ratios, but when estimating marginal rate ratios, IPW performed better. Entropy balancing produced more biased estimates in many cases. However, the entropy balancing algorithm is capable of controlling bias by loosening the tightening of the pre-specified tolerance on covariate balance. We report findings as to when one technique is better than the other with no proclamation on whether one method is in every case superior to the other. Entropy balancing merits more widespread adoption in applied studies.
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熵平衡技术在估计治疗效果的一些标准措施中的检验:模拟研究
在观察性研究中,倾向评分加权法被认为是估计治疗对结果影响的常规标准。我们介绍了熵平衡,尽管它具有良好的概念性质,但在应用研究中尚未得到充分利用。利用一系列广泛的蒙特卡罗模拟,我们评估了熵平衡在估计均值、边际优势比、比率比和风险比差异方面的性能。将熵平衡的效果与倾向得分处理加权逆概率的效果进行了相对比较。我们发现熵平衡法在估计均值差、边际优势比和风险比方面优于IPW法,但在估计边际率比时,IPW法表现更好。熵平衡在许多情况下产生了更有偏见的估计。然而,熵平衡算法能够通过放松协变量平衡上预先指定的公差的收紧来控制偏差。我们报告了一种技术何时优于另一种技术的发现,而没有宣布一种方法是否在每种情况下都优于另一种方法。熵平衡在应用研究中有更广泛的应用价值。
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CiteScore
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自引率
14.30%
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