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Regression Assumptions of OLS.

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Presentation on theme: "Regression Assumptions of OLS."— Presentation transcript:

1 Regression Assumptions of OLS

2 Assumptions of multiple regression
Equal probability of selection (SRS) Linearity (visible and invisible variables) Independence of observations: Errors are uncorrelated The mean of error term is ALWAYS zero: Mean does not depend on x. Normality (of the error term) Homoskedasticity Variance does not depend on x. No multicollinearity

3 Homoskedasticity The variance of the error term is fixed (equal across all cases). Compliance with this assumption can be empirically checked. Consequences if violated: SE will be upward biased.

4 Multicollinearity Has to do with the quality of the information matrix. No linear combination of independent variables should be able to predict any other independent variable.

5 Multicollinearity - Dx
Tolerance: VIF: Inverse of tolerance Indicates inflated standard errors >2 >2.5 Multiple correlation among IVs

6 Example: Regression with SPSS

7 Regression exercise Maternal aggression Child aggression Paternal
Harsh parenting

8 Correlations

9 SPSS output

10 SPSS output

11 Regression exercise Maternal aggression Harsh parenting Child
Paternal aggression

12 SPSS step 1: Harsh parenting

13 Step 2: Direct effects of mom

14 Step 3: Mediated effects of mom

15 Multicollinearity check

16 Including nominal Or ordinal Variables
Regression Including nominal Or ordinal Variables

17 Categorical variables in regression

18 Association with DV

19 Dummy variables

20 Regression with dummy variables

21 ANOVA UNIANOVA kidagr BY harsh_o WITH momagr dadagr
/METHOD = SSTYPE(3) /INTERCEPT = INCLUDE /CRITERIA = ALPHA(.05) /DESIGN = momagr dadagr harsh_o .

22 Regression Interaction effects

23 Moderated regression Maternal aggression Child aggression Paternal
Harsh parenting

24 Moderated regression momdadagr = momagr*dadagr

25 Issues Related to Regression Homework

26 Issues Interpreting regression coefficients when measurement units are not meaningful Interval level, different units of measurement Legend of conceptual framework Test of mediated effects XYZ Atheoretical regression models Write-up Hypotheses Less…than According to conceptual framework Regression equations in text Decimal points

27 Regression & ANOVA: Wrap up

28 Common elements All of these models are linear:
DV(s)=b1*IV1 + b2*IV2 + b3*IV3 All of these models assume a interval/ratio level DV. All of these models can handle categorical or interval/ratio IVs. All of these models use some form of least squares method (squared deviations from the mean).

29 Common elements All of these methods assume SRS (independence of observations). All of these methods assume homoskedasticity. All of these methods can only model “flat” and unidirectional effects.

30 ANOVA / Regression Differences arise from “traditions.”
ANOVA  Experimental design Regression  Non-experimental/survey design. Differences in the yield of information: Regression is superior.

31 Within Subjects Designs
Regression with fixed or random effects:

32 Factor Analyses Regression with an “unknown” IV:

33 HLMs Regression coefficients themselves are DVs.


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