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G89.2247 Lecture 4

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Title: G89.2247 Lecture 4


1
G89.2247Lecture 4
  • Panel Designs
  • Panel Path Analyses
  • Examples
  • Lords Paradox
  • Extensions

2
A Panel Design
  • In many cases we have only two time points, a
    baseline and a followup
  • Between the two time points some treatment,
    growth or other change is assumed to happen
  • The two time points allow certain causal features
    of the relationships to be examined
  • Temporal ordering of assumed cause to effect
  • Establishing the contiguity of cause to effect
  • Ruling out alternative causes, such as selection
    effects

3
A Panel Analysis
  • Path/Regression methods are often proposed for
    panel analyses

Y2 b0 b1Y1 b2X e2
4
Features of the Panel Path Analysis
  • The effect of X, b2, is a semi-partial effect
    that takes into account the level Y1
  • "Holding constant Y1, what is the effect of X?"
  • b2 is sometimes called regressed change
  • Restate Y2b0b1Y1b2Xe, as
  • Y2 - b1Y1 b0b2Xe2
  • When b1 is close to 1, then simple change and
    regressed change analyses give similar answers

5
An example
  • Suppose we want to show that the bar exam group
    has a different change in anxiety than the
    comparison group, using time 1 and time 4
    data.
  • First we regress Anxiety(week4) on Group and
    Anxiety(week1)

6
Example, continued
  • We proceed with a two step approach, first with
    no adjustment for week1 baseline, and then with
    an adjustment. Sample 0 Examinees, 1 Comparison
  • When week 1 is adjusted, the group difference
    increases. The initial tendency for the
    comparison group to be more anxious is
    statistically adjusted.

7
In Path Terms
X1
e2
-.772
r.28
Y1
Y2
.796
8
Example, continued
  • As Rogosa and others note, the results vary if we
    adjust for a different baseline
  • The one week lag produces an effect which is less
    than a half the effect of the three week lag

9
Interpreting Statistical Adjustment for Baseline
  • The panel analysis allows X1 and Y1 to be
    correlated
  • If X1 is a treatment, this correlation may
    reflect some selection effect
  • Including Y1 in the equation greatly strengthens
    the apparent causal claims regarding X1 gtY2
    compared to a simple cross-sectional analysis.
  • The statistical adjustment for Y1 may not be
    enough to eliminate selection effects.
  • If Y1 is measured with error, it will tend to
    underadjust
  • If Y1 does not perfectly describe the selection
    bias, the analysis also will underadjust.
  • E.g. Cohen's "premature covariate"

10
Regression Estimates
  • If X and the Y measures are standardized, then
    the estimate for b2 is
  • If, however, Y1, is measured with error, such
    that its reliability is R1lt1, then

11
A numerical example of underadjustment
X
Y1
Y2
X
1
Y1
0.6
1
Y2
0.5
0.7
1
Standardized coefficient for effect of X on Y
b2
0.125
Assuming Measurement error for Y1
R
0.5
b2star
0.354
12
Unreliability is not the only basis for
underadjustment
  • Consider "Lord's Paradox" (Lord, 1967)
  • Weight change in two dorms, Sept-May
  • Is there an effect of food service?

13
The two perspectives
  • The person who analyses raw change finds no
    difference On the average the two dorms have no
    weight gain
  • The person who uses regressed change finds that a
    dorm effect
  • Holding constant September weight, persons from
    one dorm are likely to be heavier than persons in
    the other dorm

14
The Paradox Explained
  • The regressed change analysis focuses on May
    Weight holding constant September weight
  • Suppose we found that women were more likely to
    be in Dorm B and men in Dorm A
  • When we compare a man and a woman who are the
    same weight in September, we expect the man to
    gain weight, and the woman to lose weight.
  • Even though it is reliable and valid, September
    weight is not a perfect proxy for selection
    effects

15
Combining Raw Change and Regression
  • Suppose we defined D Y2 Y1 to be raw change
  • D will be negatively correlated with level of Y1
  • Higher scores on Y1 are more likely to go down
    and lower scores are more likely to go up
  • Consider adjusting for Y1
  • D a0 a1Y1 a2X e(Y2-Y1) a0 a1Y1 a2X
    e
  • This implies
  • Y2 a0 (1a1)Y1 a2X e

16
Return to Example
  • Let D41difference between Anx 4 and Anx 1
  • The group difference in this case is larger
    before adjustment, but the unstandardized
    adjusted results are exactly what we had before.

17
The Closer Time Point
  • Now consider the anxiety difference between
    Times 4 and 3
  • In this case the raw effect is diminished by
    adjustment.
  • Note that while the unstandardized coefficient
    does not change, the standardized value does
    change.

18
Extensions of Path Approach
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