miesize: Effect-size calculation in imputed data

Paul A. Tiffin
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Abstract

In this article, I describe the miesize command for the calculation of effect sizes in imputed data. There may be situations where an effect size needs to be estimated for an intervention, an exposure, or a group membership variable but data on the independent or dependent variable are missing. Such missing data are commonly dealt with by multiply imputing plausible values. However, in this circumstance, the estimated effect size and associated standard errors will need to be pooled and estimated from the imputed dataset. The miesize command automates this process and calculates effect sizes for a binary variable from multiply imputed data in wide format. The estimates and standard errors (used to calculate the confidence intervals) are recombined using Rubin’s (1987, Multiple Imputation for Nonresponse in Surveys [Wiley]) rules. These rules are applied such that the average point estimate for the effect size is calculated from the imputed datasets. The pooled standard error, and hence confidence intervals, is calculated to account for both the variance between the imputed datasets and the variance within them. Pooled effect sizes and confidence intervals for Cohen’s (1988, Statistical Power Analysis for the Behavioral Sciences, 2nd ed. [Lawrence Erlbaum]) d, Hedges’s (1981, Journal of Educational Statistics 6: 107-128) g, and Glass’s ( Smith and Glass, 1977 , American Psychologist 32: 752-760) delta are provided by miesize.
miesize:估算数据中的效应大小计算
在本文中,我将介绍在估算数据中计算效应大小的 miesize 命令。在某些情况下,需要估算干预、暴露或群体成员变量的效应大小,但却缺少自变量或因变量的数据。处理这种缺失数据的方法通常是乘以可信值。但是,在这种情况下,需要对估算的效应大小和相关标准误差进行汇总,并从估算的数据集中进行估算。miesize 命令可以自动完成这一过程,并从宽幅格式的多重归因数据中计算二元变量的效应大小。估算值和标准误差(用于计算置信区间)使用 Rubin(1987 年,《调查中的非响应多重估算》[Wiley])的规则重新组合。这些规则的应用是为了从估算数据集计算出效应大小的平均点估算值。计算汇总标准误差和置信区间时,既要考虑估算数据集之间的差异,也要考虑数据集内部的差异。miesize 提供了 Cohen 的 d、Hedges 的 g 和 Glass 的 delta(Smith 和 Glass,1977,American Psychologist 32: 752-760)的集合效应大小和置信区间(1988,Statistical Power Analysis for the Behavioral Sciences,2nd ed. [Lawrence Erlbaum])。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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