Jabbari Yasaman, Cribbie Robert
Department of Psychology, Neuroscience & Behaviour, McMaster University, Hamilton, Canada.
Department of Psychology, York University, Toronto, Canada.
J Appl Stat. 2021 Feb 19;49(8):2001-2015. doi: 10.1080/02664763.2021.1887102. eCollection 2022.
Behavioral science researchers are often interested in whether there is negligible interaction among continuous predictors of an outcome variable. For example, a researcher might be interested in demonstrating that the effect of perfectionism on depression is very consistent across age. In this case, the researcher is interested in assessing whether the interaction between the predictors is too small to be meaningful. Unfortunately, most researchers address the above research question using a traditional association-based null hypothesis test (e.g. regression) where their goal is to fail to reject the null hypothesis of no interaction. Common problems with traditional tests are their sensitivity to sample size and their opposite (and hence inappropriate) hypothesis setup for finding a negligible interaction effect. In this study, we investigated a method for testing for negligible interaction between continuous predictors using unstandardized and standardized regression-based models and equivalence testing. A Monte Carlo study provides evidence for the effectiveness of the equivalence-based test relative to traditional approaches.
行为科学研究人员通常对结果变量的连续预测变量之间是否存在可忽略不计的交互作用感兴趣。例如,一位研究人员可能有兴趣证明完美主义对抑郁的影响在不同年龄之间非常一致。在这种情况下,研究人员有兴趣评估预测变量之间的交互作用是否小到没有意义。不幸的是,大多数研究人员使用传统的基于关联的零假设检验(如回归)来解决上述研究问题,其目标是未能拒绝无交互作用的零假设。传统检验的常见问题是它们对样本量的敏感性以及为发现可忽略不计的交互作用效应而设置的相反(因此不适当)的假设。在本研究中,我们研究了一种使用基于非标准化和标准化回归的模型以及等效性检验来检验连续预测变量之间可忽略不计的交互作用的方法。一项蒙特卡洛研究为基于等效性的检验相对于传统方法的有效性提供了证据。