如何避免使用对称测试、净效应和p<0.05

A. Woodside
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引用次数: 7

摘要

本文的目的是描述如何以及为什么要从现在在市场营销研究中占主导地位的不良科学实践转向良好的科学实践。设计/方法/方法这篇文章包括理论构建的细节和对称测试的使用来说明不好的科学实践。相反,本文包含了基于非对称案例的非对称理论构建和检验,以说明良好的科学实践。研究结果营销科学的研究者不应该报告零假设显著性检验。他们应该报告一些精确的结果测试,避免使用多元回归分析(MRA),并使用基于布尔代数的算法来预测感兴趣的病例。考虑到不良科学实践(例如MRA和结构方程模型)的广泛主导地位,在2015-2025年的过渡时期(例如Ordanini et al., 2014),可能有必要同时纳入不良和良好的科学实践。实际意义好的科学实践比坏的科学实践更接近现实。非对称建模包括认识到独立的模型对于积极和消极结果是必要的,因为每个模型的前因由通常不同。原创性/价值这篇文章详细介绍了研究人员为什么以及如何需要接受一种新的研究范式,这种范式有助于结束目前在营销研究中占主导地位的不良科学实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How to move away from using symmetric tests, net effects, and p<0.05
Purpose The purpose of this paper is to describe how and why to shift away from bad science practices now dominant in research in marketing to good science practices. Design/methodology/approach The essay includes details in theory construction and the use of symmetric tests to illustrate bad science practices. In contrast, the essay includes asymmetric case-based asymmetric theory construction and testing to illustrate good science practices. Findings Researchers in marketing science should not report null hypothesis significance tests. They should report somewhat precise outcome tests, avoid using multiple regression analysis (MRA) and do use Boolean-algebra-based algorithms to predict cases of interest. Research limitations/implications Given the widespread dominance of bad science practices (e.g. MRA and structural equation modeling), the inclusion of both bad and good science practices may be necessary during the transition years of 2015–2025 (e.g. Ordanini et al., 2014). Practical implications Good science practices fit reality much closer than bad science practices. Asymmetric modeling includes recognizing the separate models are necessary for positive vs negative outcomes because the antecedents of each often differ. Originality/value This essay presents details of why and how researchers need to embrace a new research paradigm that is helpful for ending bad science practices that are now dominant in research in marketing.
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