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MULTIPLE REGRESSION TOPICS

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Fig. 8.4: Venn diagram for multiple regression with two predictors and one outcome measure ... PATH DIAGRAM FOR REGRESSION Beta weight form. Depression ... – PowerPoint PPT presentation

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Title: MULTIPLE REGRESSION TOPICS


1
LECTURE 5
  • MULTIPLE REGRESSION TOPICS
  • SQUARED MULTIPLE CORRELATION
  • B AND BETA WEIGHTS
  • HIERARCHICAL REGRESSION MODELS
  • SETS OF INDEPENDENT VARIABLES
  • SIGNIFICANCE TESTING SETS
  • POWER
  • ERROR RATES

2
SQUARED 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)

3
Multiple 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)

4
SSreg
ssx1
SSy
SSe
ssx2
Fig. 8.4 Venn diagram for multiple regression
with two predictors and one outcome measure
5
SSreg
ssx1
SSy
SSe
ssx2
Fig. 8.4 Venn diagram for multiple regression
with two predictors and one outcome measure
6
Type I ssx1
SSx1
SSy
SSe
SSx2
Type III ssx2
Fig. 8.5 Type I and III contributions
7
B and Beta Weights
  • B weights
  • are t-distributed under multinormality
  • Give change in y per unit change in predictor x
  • raw or unstandardized coefficients

8
B 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

9
PATH 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
10
Depression
e
.471
?.4
LOC. CON.
-.345
-.448
DEPRESSION
-.317
SELF-EST
R2 .60
.399
-.186
SELF-REL
11
PATH DIAGRAM FOR REGRESSIONS Beta weight form
X1
? .2
.387
r .35
R2y .2
Y1
e1
? .3
X2
? .2
? .5
Y2
e2
? .3
R2y .6
12
HIERARCHICAL 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

13
HIERARCHICAL REGRESSION
  • Sample-focused procedures
  • Forward regression
  • Backward regression
  • Stepwise regression
  • Criteria may include R-square change in sample,
    error reduction

14
STATISTICAL 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
15
STATISTICAL 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
16
Experimentwise 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)
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