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Sample Size Calculation and Optimal Design for Regression-Based Norming of Tests and Questionnaires

机译:基于回归的测试和问卷规范的样本量计算和优化设计

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To prevent mistakes in psychological assessment, the precision of test norms is important. This can be achieved by drawing a large normative sample and using regression-based norming. Based on that norming method, a procedure for sample size planning to make inference on Z-scores and percentile rank scores is proposed. Sampling variance formulas for these norm statistics are derived and used to obtain the optimal design, that is, the optimal predictor distribution, for the normative sample, thereby maximizing precision of estimation. This is done under five regression models with a quantitative and a categorical predictor, differing in whether they allow for interaction and nonlinearity. Efficient robust designs are given in case of uncertainty about the regression model. Furthermore, formulas are provided to compute the normative sample size such that individuals' positions relative to the derived norms can be assessed with prespecified power and precision. Translational Abstract Normative studies are needed to derive reference values (or norms) for tests and questionnaires, so that psychologists can use them to assess individuals. Specifically, norms allow psychologists to interpret individuals' score on a test by comparing it with the scores of their peers (e.g., individuals with the same sex, age, and educational level) in the reference population. Because norms are also used to make decisions on individuals, such as the assignment to clinical treatment or remedial teaching, it is important that norms are precise (i.e., not strongly affected by sampling error in the sample on which the norms are based). This article shows how this goal can be attained in three steps. First, norms are derived using the regression-based approach, which is more efficient than the traditional approach of splitting the sample into subgroups based on demographic factors and deriving norms per subgroup. Specifically, the regression-based approach allows researchers to identify the predictors (e.g., demographic factors) that affect the test score of interest, and to use the whole sample to derive norms. Second, the design of the normative study (e.g., which age groups to include) is chosen such that the precision of the norms is maximized for a given total sample size for norming. Third, this total sample size is computed such that a prespecified power and precision are obtained.
机译:为了防止错误在心理评估,测试规范的精度是很重要的。可以通过画一个大规范样本和使用回归规范化。在规范化方法,示例程序规划z得分做出推断和大小提出了百分等级分数。这些规范统计方差公式派生和用于获得最优设计,最优预测分布,规范的样本,从而最大化精确的估计。与定量和回归模型分类预测,在他们是否不同允许交互和非线性。健壮的设计给出的不确定性回归模型。提供计算规范样本大小这样,相对于个人的位置派生的规范可以评估判断能力和精度。需要规范的研究获得参考值(或规范)测试和问卷调查,因此,心理学家可以使用它们来评估个人。心理学家解释个人的分数一个测试的分数进行比较同行(例如,个人有相同的性别、年龄、和教育水平)的参考人口。个人决策,如任务临床治疗或补救教学,它是重要的规范是准确的(也就是说,不是强烈影响样本的抽样误差基于规范)。如何达到这一目标的三个步骤。首先,规范使用回归的方法,这是更多效率比传统的方法把样品分成子组的基础上人口因素和派生规范子群。方法允许研究人员识别预测(例如,人口因素)影响感兴趣的测试成绩,并使用整个样本得到规范。规范性的研究(例如,哪个年龄组选择包括),这样的精度规范是最大化对于一个给定的总样本量规范化。这样一个判断能力和计算得到了精度。

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