The Importance of Type II Error in Hypothesis Testing

I. Jiménez-Gamero, M. Analla
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Abstract

Statistical tests of significance theoretically deal with two mutually exclusive hypotheses: the null and the alternative. However, at least in biomedical assays, only the null hypothesis is taken into account through type I error evaluation. But, basing these tests solely on type I error has two drawbacks: first, the probability limits (5%, 1% and 0.1%) arbitrarily set to the significance levels have no scientific justification. Second, acceptation of the null hypothesis is just a matter of chance, as it is mainly conditioned by the sample size due to its direct effect on the power of the test. In this sense, while the alternative hypothesis should be accepted due to its higher likelihood, the inference based on type I error alone would lead erroneously to accepting the null one. A numerical example illustrates how considering type I error alone, a same difference was declared non-significant first but turned out to significant thereafter when the sample size was increased. Therefore, the same null hypothesis was initially accepted and rejected afterwards. However when type II error was included in the test, the same decision was adopted no matter what the sample size was. This was possible through a reformulation of the alternative hypothesis. On the other hand, type II error may, in many cases have more far-reaching consequences than type I, and then should never be ignored, especially in assays dealing with human health, food, toxicity, etc.
二类误差在假设检验中的重要性
显著性统计检验在理论上处理两个相互排斥的假设:零假设和替代假设。然而,至少在生物医学分析中,通过I型错误评估只考虑了零假设。但是,仅基于I型误差的这些测试有两个缺点:首先,任意设置为显著性水平的概率极限(5%、1%和0.1%)没有科学依据。其次,接受零假设只是一个偶然的问题,因为它主要受样本量的制约,因为它直接影响测试的能力。从这个意义上说,虽然替代假设由于其更高的可能性而应该被接受,但仅基于I型错误的推断将错误地导致接受零假设。一个数值例子说明了如何单独考虑I型误差,相同的差异首先被宣布为不显著,但当样本量增加时,随后被证明是显著的。因此,同样的零假设最初被接受,后来又被拒绝。然而,当测试中包括II型误差时,无论样本量如何,都采用了相同的决定。这是可能的,通过重新制定替代假设。另一方面,在许多情况下,II型错误可能比I型错误产生更深远的后果,因此永远不应被忽视,尤其是在涉及人类健康、食品、毒性等的分析中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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