Title: MULTIPLE REGRESSION TOPICS
1LECTURE 5
- MULTIPLE REGRESSION TOPICS
- SQUARED MULTIPLE CORRELATION
- B AND BETA WEIGHTS
- HIERARCHICAL REGRESSION MODELS
- SETS OF INDEPENDENT VARIABLES
- SIGNIFICANCE TESTING SETS
- POWER
- ERROR RATES
2SQUARED MULTIPLE CORRELATION
- Measure of variance accounted for by predictors
- Always increases (or stays same) with additional
predictors - Always gt 0 in OLS
- More stable than individual predictors
(compensatory effect across samples)
3Multiple regression analysis
- The test of the overall hypothesis that y is
unrelated to all predictors, equivalent to - H0 ?2y?123 0
- H1 ?2y?123 0
- is tested by
- F R2y?123 / p / ( 1 - R2y?123) / (n p
1) - F SSreg / p / SSe / (n p 1)
4SSreg
ssx1
SSy
SSe
ssx2
Fig. 8.4 Venn diagram for multiple regression
with two predictors and one outcome measure
5SSreg
ssx1
SSy
SSe
ssx2
Fig. 8.4 Venn diagram for multiple regression
with two predictors and one outcome measure
6Type I ssx1
SSx1
SSy
SSe
SSx2
Type III ssx2
Fig. 8.5 Type I and III contributions
7B and Beta Weights
- B weights
- are t-distributed under multinormality
- Give change in y per unit change in predictor x
- raw or unstandardized coefficients
8B and Beta Weights
- Beta weights
- are NOT t-distributed- no correct significance
test - Give change in y in standard deviation units per
standard deviation change in predictor x - standardized coefficients
- More easily interpreted
9PATH DIAGRAM FOR REGRESSION Beta weight form
? .5
X1
.387
r .4
Y
e
X2
? .6
R2 .742 .82 - 2(.74)(.8)(.4)
? (1-.42) .85
10Depression
e
.471
?.4
LOC. CON.
-.345
-.448
DEPRESSION
-.317
SELF-EST
R2 .60
.399
-.186
SELF-REL
11PATH DIAGRAM FOR REGRESSIONS Beta weight form
X1
? .2
.387
r .35
R2y .2
Y1
e1
? .3
X2
? .2
? .5
Y2
e2
? .3
R2y .6
12HIERARCHICAL REGRESSION
- Predictors entered in SETS
- First set either causally prior, existing
conditions, or theoretically/empirically
established structure - Next set added to decide if model changes
- Mediation effect
- Independent contribution to R-square
13HIERARCHICAL REGRESSION
- Sample-focused procedures
- Forward regression
- Backward regression
- Stepwise regression
- Criteria may include R-square change in sample,
error reduction
14STATISTICAL TESTING Single additional predictor
- R-square change F-test for increase in SS per
predictor in relation to MSerror for complete
model - F (1,dfe) (SSAB SSA )/ MSeAB
A
B
Y
A
byB
SSe
B
Y
t byB / sebyB
15STATISTICAL TESTING Sets of predictors
- R-square change F-test for increase in SS per p
predictors in relation to MSerror for complete
model - F (p,dfe) ((SSAB SSA )/p)/ MSeAB
Y
A
B is a set of p predictors
SSe
B
16Experimentwise Error Rate
- Bonferroni error rate ptotal lt p1 p2 p3
- Allocate error differentially according to
theory - Predicted variables should have liberal error for
deletion (eg. .05 to retain in model) - Unpredicted additional variables should have
conservative error to add (eg. .01 to add to
model)