Title: Studenmund (2006): Chapter 10
1Lecture 10
Studenmund (2006) Chapter 10
Heteroscedasticity
Heteroskedasticity
- Objectives
- What is heteroscedasticity?
- What are the consequences?
- How is heteroscedasticity be identified?
- How is heteroscedasticity be corrected?
2The probability density function for Yi at three
different levels of family income, X1 i , are
identical.
3Homoscedastic pattern of errors
The scattered points spread out quite equally
4Heteroscedasticity Case
The variance of Yi increases as family income,
X1i, increases.
5Heteroscedastic pattern of errors
The scattered points spread out quite unequally
6Var(?i) E(?i2) ?i2 ? ?2
Definition of Heteroscedasticity
Refer to lecture notes Supplement 03A
7Consequences of heteroscedasticity
1. OLS estimators are still linear and unbiased
8Detection of heteroscedasticity
9Detection of heteroscedasticity Graphical method
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11Statistical test (i) Park test
12Example Studenmund (2006), Equation 10.21 (Table
10.1), pp.370-1
Park Test Practical In EVIEWS Procedure 1
PCON petroleum consumption in the
ith state REG motor vehicle registration TAX
the gasoline tax rate
13Graphical detection
14Procedure 2 Obtain the residuals, take square
and take log
15Horizontal variable
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18Procedure 3 4
19(ii)Breusch-Pagan test, or LM test
(3) Compute LMW n?R2
(4) Compare the W and ?2df (where the df is (q)
of regressors in (2)) if W gt ?2df gt reject
the Ho
20Yi ?0 ?1X1i ?2X2i ?3X3i ?i
21BPG test for a linear model PCON?0?1REG?2Tax?
The W-statistic indicates that the
heteroscedasticity is existed.
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23(iiia) Whites general heteroscedasticity test
(no cross-term) (The White Test)
(3) Compute W (or LM) n?R2
(4) Compare the W and ?2df (where the df is of
regressors in (2)) if W gt ?2df gt reject the Ho
24(iiib) Whites general heteroscedasticity test
(with cross-terms) (The White Test)
(3) Compute W (or LM) n?R2
(4) Compare the W and ?2df (where the df is of
regressors in (2)) if W gt ?2df gt reject the Ho
25With cross-term
No cross-term
26White test for a linear model PCON?0?1REG?2Tax
? The W-statistic indicates that the
heteroscedasticity is existed.
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28Another example 8.4 (Wooldridge(2003), pp.258)
The White test for a linear model PCON?0?1REG?2
Tax? The test statistic indicates
heteroscedasticity is existed.
29Testing the log-log model
W
30Remedy Weighted Least Squares (WLS)
Suppose Yi ?0 ?1 X1i ?2 X2i
?i
E(?i) 0, E(?i ?j ) 0 i ? j
Vqr (?i2) ?i2 ?2 f (ZX2i) ?2Zi2
If all Zi 1 (or any constant), homoscedasticity
returns. But Zi can be any value, and it is the
proportionality factor.
In the case of ?2 was known To correct the
heteroscedasticity Transform the regression
gt Y ?0 X0 ?1 X1 ?2 X2 ?i
31Why the WLS transformation can remove the
heteroscedasticity?
These three results satisfy the assumptions of
classical OLS.
32These plots suggest variance is increasing
proportional to X2i2. The scattered plots
spreading out as nonlinear pattern.
gt Yi ?1 X0 ?2 X1 ?3 ?
Where ?i satisfies the assumptions of classical
OLS
33Example Studenmund (2006), Eq. 10.24, pp.374
C.V.0.3392
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35OLS result
Refers to Studenmund (2006), Eq.(10.28), pp.376
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37Alternative remedy of heteroscedasticity
reformulate with per capita
38Now, after the reformulation The test statistic
value indicates that the heteroscedasticity is
not existed.
39W lt ?2df gt not reject Ho
40This plot suggests a variance is increasing
proportional to X2i. The scattered plots
spreading out as a linear pattern
41Transformation divided by the squared root term
--_at_sqrt(X)
42Compare to the transformation divided by the REG,
the CV of That one is smaller.
43Example Gujarati (1995), Table 11.5, pp.388
Simple OLS result RD 192.99 0.0319 Sales
SEE 2759 (0.194) (3.830)
C.V. 0.9026
44?2(0.05, 2) 5.9914 ?2(0.10, 2) 4.60517
45Observe the shape pattern of residuals linear or
nonlinear?
46Transformation equations
47Transformation divided by the squared root term
--_at_sqrt(X)
48calculate the C.V. 0.8195
49After transformation by _at_sqrt(x), the
W-statistic indicates there is no
heteroscedasticity
?2(0.05, 2) 5.9914 ?2(0.10, 2) 4.60517
W lt ?2df gt not reject Ho
50After transformation by _at_sqrt(Xi), residuals
still spread out
51Transformation divided by the suspected variable
(Xi)
52Calculate the C.V. 0.7467
53After transformation divided by the suspected X,
the W-statistic indicates there is no
heterose\cedasticity
?2(0.05, 2) 5.9914 ?2(0.10, 2) 4.60517
W lt ?2df gt not reject Ho
54After transformation divided by Xi, residuals
spread out more stable