Marko Sarstedt, Susanne J. Adler, Christian M. Ringle, Gyeongcheol Cho, Adamantios Diamantopoulos, Heungsun Hwang, Benjamin D. Liengaard
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引用次数: 0
摘要
科学研究需要可靠的研究结果,但由于研究人员在数据分析中的决定,研究结果始终存在差异。尽管研究人员严格遵守最先进的方法规范,但在分析相同数据时,研究结果可能会有所不同。结构方程建模(SEM)是创新管理中广泛使用的一种方法,用于估算构念及其指标变量之间的因果关系,本文旨在通过研究研究人员在使用不同方法进行结构方程建模时分析决策的影响来探讨这种变异性。为此,我们邀请 SEM 专家使用不同的 SEM 估计器来估计吸收能力对组织创新和绩效的影响模型。结果显示,根据研究人员的分析选择,效应大小和显著性水平存在很大差异。我们的研究强调了透明分析决策的必要性,敦促研究人员承认其结果的不确定性,实施稳健性检验,并记录不同分析工作流程的结果。根据我们的研究结果,我们就如何解决结果的可变性提出了建议和指导方针。我们的发现、结论和建议旨在提高创新管理中研究的有效性和可重复性,为改进未来的研究实践提供可操作的宝贵见解,从而提出切实可行的建议。
Same model, same data, but different outcomes: Evaluating the impact of method choices in structural equation modeling
Scientific research demands robust findings, yet variability in results persists due to researchers' decisions in data analysis. Despite strict adherence to state-of the-art methodological norms, research results can vary when analyzing the same data. This article aims to explore this variability by examining the impact of researchers' analytical decisions when using different approaches to structural equation modeling (SEM), a widely used method in innovation management to estimate cause–effect relationships between constructs and their indicator variables. For this purpose, we invited SEM experts to estimate a model on absorptive capacity's impact on organizational innovation and performance using different SEM estimators. The results show considerable variability in effect sizes and significance levels, depending on the researchers' analytical choices. Our research underscores the necessity of transparent analytical decisions, urging researchers to acknowledge their results' uncertainty, to implement robustness checks, and to document the results from different analytical workflows. Based on our findings, we provide recommendations and guidelines on how to address results variability. Our findings, conclusions, and recommendations aim to enhance research validity and reproducibility in innovation management, providing actionable and valuable insights for improved future research practices that lead to solid practical recommendations.
期刊介绍:
The Journal of Product Innovation Management is a leading academic journal focused on research, theory, and practice in innovation and new product development. It covers a broad scope of issues crucial to successful innovation in both external and internal organizational environments. The journal aims to inform, provoke thought, and contribute to the knowledge and practice of new product development and innovation management. It welcomes original articles from organizations of all sizes and domains, including start-ups, small to medium-sized enterprises, and large corporations, as well as from consumer, business-to-business, and policy domains. The journal accepts various quantitative and qualitative methodologies, and authors from diverse disciplines and functional perspectives are encouraged to submit their work.