无效假设
统计显著性
统计假设检验
检验统计量
考试(生物学)
统计
结果(博弈论)
随机性
计量经济学
统计软件
空(SQL)
统计分析
计算机科学
数学
I类和II类错误
数据挖掘
数理经济学
古生物学
生物
作者
Jan Dul,Erwin van der Laan,Roelof Kuik
标识
DOI:10.1177/1094428118795272
摘要
In this article, we present a statistical significance test for necessary conditions. This is an elaboration of necessary condition analysis (NCA), which is a data analysis approach that estimates the necessity effect size of a condition X for an outcome Y. NCA puts a ceiling on the data, representing the level of X that is necessary (but not sufficient) for a given level of Y. The empty space above the ceiling relative to the total empirical space characterizes the necessity effect size. We propose a statistical significance test that evaluates the evidence against the null hypothesis of an effect being due to chance. Such a randomness test helps protect researchers from making Type 1 errors and drawing false positive conclusions. The test is an “approximate permutation test.” The test is available in NCA software for R. We provide suggestions for further statistical development of NCA.
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