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纵向模型的样本量规划:多项式变化参数的参数估计准确性。

Sample size planning for longitudinal models: accuracy in parameter estimation for polynomial change parameters.

机构信息

Department of Management, Mendoza College of Business, University of Notre Dame, IN 46556, USA.

出版信息

Psychol Methods. 2011 Dec;16(4):391-405. doi: 10.1037/a0023352. Epub 2011 Jul 11.

Abstract

Longitudinal studies are necessary to examine individual change over time, with group status often being an important variable in explaining some individual differences in change. Although sample size planning for longitudinal studies has focused on statistical power, recent calls for effect sizes and their corresponding confidence intervals underscore the importance of obtaining sufficiently accurate estimates of group differences in change. We derived expressions that allow researchers to plan sample size to achieve the desired confidence interval width for group differences in change for orthogonal polynomial change parameters. The approaches developed provide the expected confidence interval width to be sufficiently narrow, with an extension that allows some specified degree of assurance (e.g., 99%) that the confidence interval will be sufficiently narrow. We make computer routines freely available, so that the methods developed can be used by researchers immediately.

摘要

需要进行纵向研究来检查个体随时间的变化,而组状态通常是解释变化中某些个体差异的重要变量。虽然纵向研究的样本量规划一直侧重于统计功效,但最近对效应量及其相应置信区间的呼吁强调了获得变化中组间差异的足够准确估计的重要性。我们推导出了一些表达式,使研究人员能够规划样本量,以实现对正交多项式变化参数的变化中组间差异的期望置信区间宽度。所开发的方法提供了足够窄的预期置信区间宽度,并进行了扩展,以允许有一定程度的保证(例如 99%)置信区间将足够窄。我们免费提供计算机程序,以便研究人员可以立即使用所开发的方法。

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