样本量测定
方差膨胀系数
统计
统计能力
析因实验
样品(材料)
差异(会计)
计算机科学
逻辑回归
计量经济学
研究设计
功率分析
线性回归
数学
多重共线性
算法
化学
会计
色谱法
密码学
业务
作者
F. Hsieh,Philip W. Lavori,Harvey Jay Cohen,John R. Feussner
标识
DOI:10.1177/0163278703255230
摘要
For power and sample-size calculations, most practicing researchers rely on power and sample-size software programs to design their studies. There are many factors that affect the statistical power that, in many situations, go beyond the coverage of commercial software programs. Factors commonly known as design effects influence statistical power by inflating the variance of the test statistics. The authors quantify how these factors affect the variances so that researchers can adjust the statistical power or sample size accordingly. The authors review design effects for factorial design, crossover design, cluster randomization, unequal sample-size design, multiarm design, logistic regression, Cox regression, and the linear mixed model, as well as missing data in various designs. To design a study, researchers can apply these design effects, also known as variance inflation factors to adjust the power or sample size calculated from a two-group parallel design using standard formulas and software.
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