Lecture 13 Moderation

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PSY 251 Lecture 13 DataCamp Moderation ! !

Learning by doing 1

An example •  X: Experimental manipulation –  Stereotype threat

•  Y: Behavioral outcome –  IQ test score

•  Z: Moderator –  Working memory capacity (WMC)

Moderation •  A moderator variable (Z) will enhance a regression model if the relationship between X and Y varies as a function of Z

Moderation •  Experimental research –  The manipulation of an IV (X) causes change in a DV (Y) –  A moderator variable (Z) implies that the effect of the IV on the DV (X on Y) is NOT consistent across the distribution of Z

Moderation •  Correlational research –  Assume a correlaton between X and Y –  A moderator variable (Z) implies that the correlation between X and Y is NOT consistent across the distribution of Z

Moderation model •  If both X and Z are continuous –  Y = B0 + B1X + B2Z + B3(X*Z) + e

Moderation model •  If X is categorical* and Z is continuous –  Y = B0 + B1(D1) + B2(D2) + B3Z + B4(D1*Z) + B5(D2*Z) e *3 levels of X

How to test for moderation •  If both X and Z are continuous –  Model 1: No moderation •  Y = B0 + B1X + B2Z + e

–  Model 2: Moderation

•  Y = B0 + B1X + B2Z + B3(X*Z) + e

How to test for moderation •  If X is categorical* and Z is continuous –  Model 1: No moderation •  Y = B0 + B1(D1) + B2(D2) + B3Z + e

–  Model 2: Moderation

•  Y = B0 + B1(D1) + B2(D2) + B3Z + B4(D1*Z) + B5(D2*Z) + e

How to test for moderation •  Compare Model 1 and Model 2 in terms of 2 overall variance explained, that is, R –  NHST available for this comparison

•  Evaluate B values for predictors associated with the moderation effect –  (X*Z) –  (D1*Z) and (D2*Z)