解释有调节的多元回归:对Van Iddekinge、Aguinis、Mackey和DeOrtentiis(2018)的评论。

Jeffrey B Vancouver, Bruce W Carlson, Lindsay Y Dhanani, Cassandra E Colton
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引用次数: 3

摘要

当数据与理论相矛盾时,数据通常会获胜。然而,Van Iddekinge、Aguinis、Mackey和DeOrtentiis(2018)的结论,即绩效是能力和动机的加法函数,而不是乘法函数,可能是无效的,尽管应用了元分析的视角来看待这个问题。我们认为,这一结论很可能是由于在解释有调节的多元回归结果时出现了一个常见错误。蒙特卡罗研究被提出来说明这个问题,即适度多元回归对于检测适度的存在是有用的,但通常不能用于确定结构是否或在多大程度上具有独立或非联合(即,加法)效应,而不是联合(即,乘法)效应。此外,我们认为,除非相互作用是完全对称的(即x形),否则将相互作用项的增量贡献添加到一阶项中作为效应大小的做法是不合适的,因为使用了缓和多元回归的部分化过程。我们讨论了正确指定性能模型的重要性,以及可能有助于对具有假设乘法函数的理论得出有效结论的方法。最后,我们建议用单个而不是单独的步骤拟合整个有调节的多元回归模型,以避免本文强调的解释错误。(PsycInfo Database Record (c) 2021 APA,版权所有)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpreting moderated multiple regression: A comment on Van Iddekinge, Aguinis, Mackey, and DeOrtentiis (2018).

When data contradict theory, data usually win. Yet, the conclusion of Van Iddekinge, Aguinis, Mackey, and DeOrtentiis (2018) that performance is an additive rather than multiplicative function of ability and motivation may not be valid, despite applying a meta-analytic lens to the issue. We argue that the conclusion was likely reached because of a common error in the interpretation of moderated multiple-regression results. A Monte Carlo study is presented to illustrate the issue, which is that moderated multiple regression is useful for detecting the presence of moderation but typically cannot be used to determine whether or to what degree the constructs have independent or nonjoint (i.e., additive) effects beyond the joint (i.e., multiplicative) effect. Moreover, we argue that the practice of interpreting the incremental contribution of the interaction term when added to the first-order terms as an effect size is inappropriate, unless the interaction is perfectly symmetrical (i.e., X-shaped), because of the partialing procedure that moderated multiple regression uses. We discuss the importance of correctly specifying models of performance as well as methods that might facilitate drawing valid conclusions about theories with hypothesized multiplicative functions. We conclude with a recommendation to fit the entire moderated multiple-regression model in a single rather than separate steps to avoid the interpretation error highlighted in this article. (PsycInfo Database Record (c) 2021 APA, all rights reserved).

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