显著性检验:我们可以做得更好

T. Dyckman
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引用次数: 25

摘要

本文主张放弃零假设统计检验(NHST),而采用报告置信区间。反对NHST的案例已经在多个学科中反复提出,并且在认识和接受方面正在增长,介绍和讨论。会计作为一门实证研究学科,似乎是最后一个面对显著性检验使用和滥用的固有问题的研究界。本文鼓励采用荟萃分析方法,允许在证据评估中纳入重复性研究。这种方法需要放弃典型的NHST过程及其对p值的依赖。然而,鉴于NHST在实证测试界有着深厚的根基和广泛的“社会接受度”,建议对NHST进行修改,以部分抵消这种统计测试方法的弱点。
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Significance Testing: We Can Do Better
type="main"> This paper advocates abandoning null hypothesis statistical tests (NHST) in favour of reporting confidence intervals. The case against NHST, which has been made repeatedly in multiple disciplines and is growing in awareness and acceptance, is introduced and discussed. Accounting as an empirical research discipline appears to be the last of the research communities to face up to the inherent problems of significance test use and abuse. The paper encourages adoption of a meta-analysis approach which allows for the inclusion of replication studies in the assessment of evidence. This approach requires abandoning the typical NHST process and its reliance on p-values. However, given that NHST has deep roots and wide ‘social acceptance’ in the empirical testing community, modifications to NHST are suggested so as to partly counter the weakness of this statistical testing method.
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