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Testing for adverse impact when sample size is small

机译:样本量较小时测试不良影响

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Adverse impact evaluations often call for evidence that the disparity between groups in selection rates is statistically significant, and practitioners must choose which test statistic to apply in this situation. To identify the most effective testing procedure, the authors compared several alternate test statistics in terms of Type I error rates and power, focusing on situations with small samples. Significance testing was found to be of limited value because of low power for all tests. Among the alternate test statistics, the widely-used Z-test on the difference between two proportions performed reasonably well, except when sample size was extremely small. A test suggested by G. J. G. Upton (1982) provided slightly better control of Type I error under some conditions but generally produced results similar to the Z-test. Use of the Fisher Exact Test and Yates's continuity-corrected chi-square test are not recommended because of overly conservative Type I error rates and substantially lower power than the Z-test.
机译:不良影响评估通常需要证据表明,各组之间的选择率差异在统计上是显着的,从业人员必须选择在这种情况下要应用的检验统计量。为了确定最有效的测试程序,作者比较了I型错误率和功效方面的几种备用测试统计数据,重点是小样本情况。由于所有测试的低功耗,重要性测试的价值有限。在替代测试统计数据中,除两个样本的样本极小外,对两个比例之间的差异进行的广泛使用的Z检验均表现良好。 G. J. G. Upton(1982)提出的测试在某些条件下可以更好地控制I型错误,但通常产生的结果类似于Z检验。不建议使用Fisher精确检验和Yates的经连续性校正的卡方检验,因为I型错误率过于保守,且功效远低于Z检验。

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