Logistic Regression: A Self-learning Text, Third Edition (Statistics in the Health Sciences)

(vip2019) #1
D. Modeling strategy: AllEs, noCs

Model: Logit PðXÞ¼aþ~

q

i¼ 1

biEiþ~

q

i¼ 1

~


q

i^0 ¼ 1
i 6 ¼i^0

d*ii 0 EiEi^0

Step 1: Define initial model (above)
Step 2: Assess interaction involvingEs.
Option A*: Overall chunk test forEEs,
followed by backward elimination of
EEs
Option B*: Skip chunk test forEEs; start
with backward elimination ofEEs
Skip previous Step 3
Step 4: Test for nonsignificantEs if not
components of significantEEs
E. How causal diagrams can influence choice of
initial model?

III. Screening Variables (pages 263–270)


A. Problem Focus: Model contains oneE, and a large
number ofCs andECs,butcomputer program
does not run or fitted model unreliable (“large” p)
B. Screening: Exclude someCjone-at-a-time; fit
reduced model
C. Method 0:Consider predictors one-at-a-time;
screen-out thoseXinot significantly associated
with the outcome (D)
D. Questions and Brief Answers about Method 0:


  1. Any criticism? Yes: does not consider
    confounding or interaction involvingCs

  2. Depends on types ofXs? Yes: use if onlyEs
    and noCs.

  3. How largekcompared ton? No good answer.

  4. Other ways than Method 0? Yes: evaluate
    confounding and/or interaction forCs.

  5. Collinearity and/or screening? Consider
    collinearity prior to and following screening.
    E. Assessing Confounding and Interaction when
    Screening C variables.
    Confounding: Compare Logit P(X)¼aþbEwith
    Logit P(X)¼aþbEþgC
    DoesdORDE¼e
    ^b
    6 ¼dORDEjC¼e
    ^b*
    ?


Interaction: TestH 0 :d¼0 for the model Logit
P(X)¼aþbEþgCþdEC
F. How to proceed if severalEs and severalCs: It
depends!
G. How to proceed if severalEs and noCs: Use
method 0.

Detailed Outline 287
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