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A Unification of Mediator, Confounder, and Collider Effects
Author(s) -
David P. MacKin,
Sophia J. Lamp
Publication year - 2021
Publication title -
prevention science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.785
H-Index - 85
eISSN - 1573-6695
pISSN - 1389-4986
DOI - 10.1007/s11121-021-01268-x
Subject(s) - collider , mediation , variable (mathematics) , confounding , health psychology , variables , estimator , unification , mediator , physics , econometrics , computer science , statistics , mathematics , particle physics , medicine , public health , mathematical analysis , nursing , law , programming language , political science
Third-variable effects, such as mediation and confounding, are core concepts in prevention science, providing the theoretical basis for investigating how risk factors affect behavior and how interventions change behavior. Another third variable, the collider, is not commonly considered but is also important for prevention science. This paper describes the importance of the collider effect as well as the similarities and differences between these three third-variable effects. The single mediator model in which the third variable (T) is a mediator of the independent variable (X) to dependent variable (Y) effect is used to demonstrate how to estimate each third-variable effect. We provide difference in coefficients and product of coefficients estimators of the effects and demonstrate how to calculate these values with real data. Suppression effects are defined for each type of third-variable effect. Future directions and implications of these results are discussed.

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