I类和II类错误
异方差
统计
偏斜
正态性
统计能力
考试(生物学)
样本量测定
样品(材料)
标称水平
统计假设检验
数学
转化(遗传学)
计量经济学
置信区间
心理学
生物
生物化学
基因
色谱法
古生物学
化学
作者
H. J. Keselman,Abdul Rahim Othman,Rand R. Wilcox,Katherine Fradette
标识
DOI:10.1111/j.0963-7214.2004.01501008.x
摘要
This article considers the problem of comparing two independent groups in terms of some measure of location. It is well known that with Student's two-independent-sample t test, the actual level of significance can be well above or below the nominal level, confidence intervals can have inaccurate probability coverage, and power can be low relative to other methods. A solution to deal with heterogeneity is Welch's (1938) test. Welch's test deals with heteroscedasticity but can have poor power under arbitrarily small departures from normality. Yuen (1974) generalized Welch's test to trimmed means; her method provides improved control over the probability of a Type I error, but problems remain. Transformations for skewness improve matters, but the probability of a Type I error remains unsatisfactory in some situations. We find that a transformation for skewness combined with a bootstrap method improves Type I error control and probability coverage even if sample sizes are small.
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