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Interval estimates of multivariate effect sizes - Coverage and interval width estimates under variance heterogeneity and nonnormality

机译:多元效应量的区间估计-方差异质性和非正态下的覆盖范围和区间宽度估计

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Monte Carlo methods were used to examine techniques for constructing confidence intervals around multivariate effect sizes. Using interval inversion and bootstrapping methods, confidence intervals were constructed around the standard estimate of Mahalanobis distance (D), two bias-adjusted estimates of D-2, and Huberty's I. Interval coverage and width were examined across conditions by adjusting sample size, number of variables, population effect size, population distribution shape, and the covariance structure. The accuracy and precision of the intervals varied considerably across methods and conditions; however, the interval inversion approach appears to be promising for D-2, whereas the percentile bootstrap approach is recommended for the other effect size measures. The results imply that it is possible to obtain fairly accurate coverage estimates for multivariate effect sizes. However, interval width estimates tended to be large and uninformative, suggesting that future efforts might focus on investigating design factors that facilitate more precise estimates of multivariate effect sizes.
机译:蒙特卡洛方法用于检查围绕多变量效应量构建置信区间的技术。使用区间求逆和自举方法,围绕马氏距离(D)的标准估计值,D-2的两个偏差调整后的估计值和Huberty I构造置信区间。通过调整样本大小,数量来检查整个条件下的区间覆盖率和宽度变量,总体影响大小,总体分布形状和协方差结构。间隔的准确性和精确度因方法和条件而异;然而,间隔反转方法对于D-2似乎很有希望,而百分位自举方法则建议用于其他效果量度。结果暗示有可能获得多元效果大小的相当准确的覆盖率估计。但是,区间宽度估计往往很大且没有信息,这表明未来的工作可能会集中在调查设计因素上,这些因素有助于对多变量效应量进行更精确的估计。

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