EXPRESS:“统计显著性”与统计报告:超越二元

IF 11.5 1区 管理学 Q1 BUSINESS
Blakeley B. McShane, Eric T. Bradlow, John G. Lynch, Robert J. Meyer
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引用次数: 1

摘要

零假设显著性检验(NHST)是市场营销和更广泛的生物医学和社会科学中统计分析和报告的默认方法。尽管NHST扮演着默认的角色,但它长期以来一直受到统计学家和应用研究人员(包括营销人员)的批评。因此,作者建议在统计分析和报告方面进行重大转变。具体来说,他们建议超越二元:放弃NHST作为统计分析和报告的默认方法。为了方便起见,他们简要回顾了与NHST相关的一些主要问题。接下来,他们讨论了一些他们认为应该作为统计分析和报告基础的原则。然后,他们使用这些原则来激励统计分析和报告的一些指导方针。接下来,他们提供了一些例子来说明遵循他们的原则和指导方针的统计分析和报告。他们以简短的讨论结束。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EXPRESS: “Statistical Significance” and Statistical Reporting: Moving Beyond Binary
Null hypothesis significance testing (NHST) is the default approach to statistical analysis and reporting in marketing and the biomedical and social sciences more broadly. Despite its default role, NHST has long been criticized by both statisticians and applied researchers including those within marketing. Therefore, the authors propose a major transition in statistical analysis and reporting. Specifically, they propose moving beyond binary: abandoning NHST as the default approach to statistical analysis and reporting. To facilitate this, they briefly review some of the principal problems associated with NHST. They next discuss some principles that they believe should underlie statistical analysis and reporting. They then use these principles to motivate some guidelines for statistical analysis and reporting. They next provide some examples that illustrate statistical analysis and reporting that adheres to their principles and guidelines. They conclude with a brief discussion.
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来源期刊
CiteScore
24.10
自引率
5.40%
发文量
49
期刊介绍: Founded in 1936,the Journal of Marketing (JM) serves as a premier outlet for substantive research in marketing. JM is dedicated to developing and disseminating knowledge about real-world marketing questions, catering to scholars, educators, managers, policy makers, consumers, and other global societal stakeholders. Over the years,JM has played a crucial role in shaping the content and boundaries of the marketing discipline.
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