Brief Commentary: Theory Testing for Differences in Process—Hypothesizing, Testing, and Reporting Comparisons Between Indirect Effects
帮助消费者研究者将过程相关的理论假设映射到统计系数上,并正确报告结果,涵盖调节中介和平行中介两种情形,提供预注册、数据分析和手稿报告的具体示例。
Abstract Consumer researchers often compare a proposed process across contexts (i.e., moderated mediation) or across mediators (e.g., ruling out an alternative process in parallel mediation). This article aims to help researchers in mapping process-related theoretical hypotheses onto statistical coefficients and in reporting their results. Researchers can formulate a variety of hypotheses about the conditional indirect effect (CIE) of a predictor X on an outcome Y through a mediator M, such as: (A) the CIE is greater for moderator condition W0 than W1, (B) the CIE is only positive for W0, (C) the CIE is positive for W0 and negative for W1. For example, if a researcher’s hypotheses align with case A, they must test and report the difference between the two conditional indirect effects (i.e., the index of moderated mediation). Reporting that the indirect effect is significant for W0 and non-significant for W1 would be insufficient for case A, but appropriate for case B. We generalize these examples in two tutorials—for moderated mediation and for parallel mediation—to help researchers (1) connect theory to testable predictions, (2) select the appropriate statistical model, and (3) report results transparently and consistently. We provide concrete examples of pre-registrations, data analyses, and manuscript reports.