Moderated Mediation
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In statistics,
moderation Moderation is the process of eliminating or lessening extremes. It is used to ensure normality throughout the medium on which it is being conducted. Common uses of moderation include: *Ensuring consistency and accuracy in the marking of stud ...
and
mediation Mediation is a structured, interactive process where an impartial third party neutral assists disputing parties in resolving conflict through the use of specialized communication and negotiation techniques. All participants in mediation are ...
can occur together in the same model.Muller, D., Judd, C. M., & Yzerbyt, V. Y. (2005). When moderation is mediated and mediation is moderated. ''Journal of Personality and Social Psychology, 89'', 852–863. Moderated mediation, also known as conditional indirect effects,Preacher, K. J., Rucker, D. D., & Hayes, A. F. (2007) Addressing moderated mediation hypotheses: Theory, Methods, and Prescriptions. ''Multivariate Behavioral Research, 42,'' 185–227. occurs when the treatment effect of an independent variable A on an outcome variable C via a mediator variable B differs depending on levels of a moderator variable D. Specifically, either the effect of A on B, and/or the effect of B on C depends on the level of D.


Langfred (2004) model

Langfred (2004) was the first to provide a comprehensive treatment of the question of how to conceptualize moderated mediation, classify different types of moderated mediation models, and to develop the logic and methodology for the statistical analysis of such models using multiple regression. Because there was no established procedure to analyze models with moderated mediation, Langfred (2004) first describes the different types of moderated mediation models that might exist, noting that there are two primary forms of moderated mediation. Type 1, in which the moderator operates on the relationship between the independent variable and the mediator, and Type 2, in which the moderator operates on the relationship between the mediator and the dependent variable. Langfred reviews the existing perspectives on moderated mediation (James and Brett, 1984), and notes that an accepted statistical approach already exists for Type 1 moderated mediation, as demonstrated by Korsgaard, Brodt, and Whitener (2002). Type 2 moderation, however, is more statistically difficult, so Langfred reviews three different possible approaches for the analysis, and ultimately recommends one of them as the correct technique. Langfred (2004) is often overlooked because the academic paper itself is not about statistical methodology. Rather, because the model in the paper involved moderated mediation, a very large appendix was included, in which the definitions and procedures for the regression analysis were developed.


Muller, Judd, & Yzerbyt (2005)

Muller, Judd, and Yzerbyt (2005) provided additional clarity and definition of moderated mediation. The following regression equations are fundamental to their model of moderated mediation, where ''A'' = independent variable, ''C'' = outcome variable, ''B'' = mediator variable, and ''D'' = moderator variable. : ''C'' = ''β''40 + ''β''41''A'' + ''β''42''D'' + ''β''43''AD'' + ε4 This equation assesses moderation of the overall treatment effect of A on C. : ''B'' = ''β''50 + ''β''51''A'' + ''β''52''D'' + ''β''53''AD'' + ''ε''5 This equation assesses moderation of the treatment effect of A on the mediator B. : ''C'' = ''β''60 + ''β''61''A'' + ''β''62''D'' + ''β''63''AD'' + ''β''64''B'' + ''β''65''BD'' + ''ε''6 This equation assesses moderation of the effect of the mediator B on C, as well as moderation of the residual treatment effect of A on C. This fundamental equality exists among these equations: : ''β''43 – ''β''63 = ''β''64''β''53 + ''β''65''β''51 In order to have moderated mediation, there must be an overall treatment effect of A on the outcome variable C (''β''41), which does not depend on the moderator (''β''43 = 0). In addition, the treatment effect of A on the mediator B depends on the moderator (''β''53 ≠ 0) and/or the effect of the mediator B on the outcome variable C depends on the moderator (''β''65 ≠ 0). At least one of the products on the right side of the above equation must not equal 0 (i.e. either ''β''53 ≠ 0 and ''β''64 ≠ 0, or ''β''65 ≠ 0 and ''β''51 ≠ 0). As well, since there is no overall moderation of the treatment effect of A on the outcome variable C (''β''43 = 0), this means that ''β''63 cannot equal 0. In other words, the residual direct effect of A on the outcome variable C, controlling for the mediator, is moderated.


Additions by Preacher, Rucker, and Hayes (2007)

In addition to the three manners proposed by Muller and colleagues in which moderated mediation can occur, Preacher, Rucker, and Hayes (2007) proposed that the independent variable A itself can moderate the effect of the mediator B on the outcome variable C. They also proposed that a moderator variable D could moderate the effect of A on B, while a different moderator E moderates the effect of B on C.


Differences between moderated mediation and mediated moderation

Moderated mediation relies on the same underlying models (specified above) as mediated moderation. The main difference between the two processes is whether there is overall moderation of the treatment effect of A on the outcome variable C. If there is, then there is mediated moderation. If there is no overall moderation of A on C, then there is moderated mediation.


Testing for moderated mediation

In order to test for moderated mediation, some recommend examining a series of models, sometimes called a piecemeal approach, and looking at the overall pattern of results. This approach is similar to the Baron and Kenny method for testing mediation by analyzing a series of three regressions.Baron, R. M., & Kenny, D. A. (1986). The moderator-mediator variable distinction in social psychological research: Conceptual, strategic, and statistical considerations. ''Journal of Personality and Social Psychology, 51,'' 1173–1182. These researchers claim that a single overall test would be insufficient to analyze the complex processes at play in moderated mediation, and would not allow one to differentiate between moderated mediation and mediated moderation.
Bootstrapping In general, bootstrapping usually refers to a self-starting process that is supposed to continue or grow without external input. Etymology Tall boots may have a tab, loop or handle at the top known as a bootstrap, allowing one to use fingers ...
has also been suggested as a method of estimating the sampling distributions of a moderated mediation model in order to generate confidence intervals. This method has the advantage of not requiring that any assumptions be made about the shape of the sampling distribution. Preacher, Rucker and Hayes also discuss an extension of simple slopes analysis for moderated mediation. Under this approach, one must choose a limited number of key conditional values of the moderator that will be examined. As well, one can use the Johnson–Neyman technique to determine the range of significant conditional indirect effects. Preacher, Rucker, and Hayes (2007) have created an SPSS macro that provides bootstrapping estimations as well as Johnson–Neyman results. Their macro is made obsolete with the release of PROCESS for SPSS and SAS, described in ''Introduction to Mediation, Moderation, and Conditional Process Analysis'' (Hayes, 2013)Hayes. A. F. 2013. Introduction to mediation, moderation, and conditional process analysis: A regression based approach. New York: The Guilford Press.


See also

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Bootstrapping (statistics) Bootstrapping is any test or metric that uses random sampling with replacement (e.g. mimicking the sampling process), and falls under the broader class of resampling methods. Bootstrapping assigns measures of accuracy (bias, variance, confidenc ...
*
Mediation (statistics) In statistics, a mediation model seeks to identify and explain the mechanism or process that underlies an observed relationship between an independent variable and a dependent variable via the inclusion of a third hypothetical variable, known as ...
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Moderation (statistics) In statistics and regression analysis, moderation (also known as effect modification) occurs when the relationship between two variables depends on a third variable. The third variable is referred to as the moderator variable (or effect modifier) o ...
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Regression analysis In statistical modeling, regression analysis is a set of statistical processes for estimating the relationships between a dependent variable (often called the 'outcome' or 'response' variable, or a 'label' in machine learning parlance) and one ...


References

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External links



PROCESS macro for SPSS and SAS Statistical models Regression analysis