Domingue Benjamin W, Kanopka Klint, Trejo Sam, Rhemtulla Mijke, Tucker-Drob Elliot M
Graduate School of Education, Stanford University, Stanford Medicine.
Graduate School of Education, Stanford University.
Psychol Methods. 2024 Dec;29(6):1164-1179. doi: 10.1037/met0000532. Epub 2022 Oct 6.
Studies of interaction effects are of great interest because they identify crucial interplay between predictors in explaining outcomes. Previous work has considered several potential sources of statistical bias and substantive misinterpretation in the study of interactions, but less attention has been devoted to the role of the outcome variable in such research. Here, we consider bias and false discovery associated with estimates of interaction parameters as a function of the distributional and metric properties of the outcome variable. We begin by illustrating that, for a variety of noncontinuously distributed outcomes (i.e., binary and count outcomes), attempts to use the linear model for recovery leads to catastrophic levels of bias and false discovery. Next, focusing on transformations of normally distributed variables (i.e., censoring and noninterval scaling), we show that linear models again produce spurious interaction effects. We provide explanations offering geometric and algebraic intuition as to why interactions are a challenge for these incorrectly specified models. In light of these findings, we make two specific recommendations. First, a careful consideration of the outcome's distributional properties should be a standard component of interaction studies. Second, researchers should approach research focusing on interactions with heightened levels of scrutiny. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
交互作用效应的研究备受关注,因为它们揭示了预测变量在解释结果时的关键相互作用。以往的研究已经考虑了交互作用研究中统计偏差和实质性错误解释的几个潜在来源,但对结果变量在此类研究中的作用关注较少。在此,我们将交互作用参数估计中的偏差和错误发现视为结果变量分布和度量属性的函数进行探讨。我们首先说明,对于各种非连续分布的结果(即二元和计数结果),使用线性模型进行恢复会导致灾难性的偏差和错误发现水平。接下来,聚焦于正态分布变量的变换(即删失和非区间缩放),我们表明线性模型再次会产生虚假的交互作用效应。我们从几何和代数角度给出解释,说明为何交互作用对这些错误设定的模型来说是个挑战。鉴于这些发现,我们提出两条具体建议。第一,仔细考虑结果的分布属性应成为交互作用研究的标准组成部分。第二,研究人员在进行聚焦于交互作用的研究时应更加审慎。(PsycInfo数据库记录(c)2024美国心理学会,保留所有权利)