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LECTURE 5
EXTENSIONS OF THE TWO VARIABLE LINEAR REGRESSION MODEL
• Regression through the origin
• Functional forms of regression models
1
REGRESSION TROUGH THE ORIGN
Yi = β2Xi + ui (1)
What is CAPM?
(ERi − rf) = βi(ERm − rf) (2)
ERi = expected rate of return on security i
ERm = expected rate of return on the market portfolio as represented by, say, the
S&P 500 composite stock index
rf = risk–free rate of return, say, the return on 90–day Treasury bills
βi = the Beta coefficient, a measure of systematic risk.
2
If capital markets work efficiently, then CAPM postulates that security i’s expected
risk premium (= ERi −rf) is equal to that security’s β coefficient times the expected
market risk premium (= ERm − rf).
security market line (SML). s
3
Figure 1:
4
EXAMPLE–1
5
FUNCTIONAL FORMS OF REGRESSION MODELS
In the sections that follow we consider some commonly used regression models that
may be nonlinear in the variables but are linear in the parameters or that can be
made so by suitable transformations of the variables.
In particular, we discuss the following regression models
1. The log-linear model
2. Semi–log models
3. Reciprocal models
4. The logarithmic reciprocal model
6
LOG–LINEAR MODEL
Exponential regression model
Yi = β1Xβ2
i eui (3)
which may be expressed alternatively as
ln Yi = ln β1 + β2 ln Xi + ui (4)
or
ln Yi = α + β2 ln Xi + ui (5)
where α = ln β, this model is linear in the parameters α and β2, linear in the loga-
rithms of the variables Y and X, and can be estimated by OLS regression.
Because of this linearity, such models are called log–log, double–log, or log–linear
models.
If the assumptions of the classical linear regression model are fulfilled, the parame-
ters of (5) can be estimated by the OLS method by letting
7
Y ∗
i = α + β2X∗
i + ui (6)
where Y ∗ = ln Yi and Xi∗ = ln Xi .
The OLS estimators . α and β obtained will be best linear unbiased estimators of
α and β, respectively.
8
EXAMPLE–2
9
SEMILOG MODELS: LOG–LIN AND LIN–LOG MODELS
Economists, business people, and governments are often interested in finding out
the rate of growth of certain economic variables, such as population, GNP, money
supply, employment, productivity, and trade deficit. etc
Yt = Y0(1 + r)r
where r is the compound rate of growth of Y
ln Yt = ln Y0 + t ln(1 + r)
Now letting
β1 = ln Y0
β2 = ln(1 + r)
so
ln Yt = β1 + β2t + εt (7)
In this model the slope coefficient measures the constant proportional or relative
change in Y for a given absolute change in the value of the regressor.
10
EXAMPLE–3
11
LINEAR TREND MODEL
Instead of estimating model (7) researchers sometimes estimate the following model:
Yt = β1 + β2t + εt (8)
(8) is called a linear trend model and the time variable t is known as the trend
variable. If the slope coefficient in (8) is positive, there is an upward trend in Y ,
whereas if it is negative, there is a downward trend in Y .
12
LIN–LOG MODEL
Suppose you have the data given, where Y is GNP and X is money supply (M2
definition). Next suppose you are interested in finding out by how much (the absolute
value of) GNP increases if the money supply increases by say, a percent
Yt = β1 + β2 ln Xt + εt (9)
For descriptive purposes we call such a model a Lin–Log model.
Let us interpret the slope coefficient β2 As usual,
β2 =
change in Y
change in ln X
=
change in Y
relativechange in ln X
=
∆Y
∆X/X
equivalently
∆Y = β2(∆X/X)
13
EXAMPLE–4
14
Reciprocal models
Models of the following type are known as reciprocal models
Yt = β1 + β2
1
Xt
+ εt (10)



nβ1 + β2
n
t=1
1
Xt
=
n
t=1
Yt
β
n
t=1
1
Xt
+ β2
n
t=1
1
Xt
2
=
n
t=1
1
Xt
Yt
β1 =
Y (1/X)2
− (1/X · Y ) 1/X
n (1/X)2 − 1/X 1/X
β2 =
n (1/X · Y ) − (1/X · Y )
n (1/X)2 − 1/X 1/X
15
EXAMPLE–5
16
17
18
19
Phillips curve
20
21
22
23
24
25
26
27
28
EXDURt = β1PCEXβ2
t
or
ln EXDURt = α + β2 ln PCEXt



nα + β2
n
t=1
ln Xt =
n
t=1
ln Yt
α
n
t=1
Xt + β2
n
t=1
(ln Xt)2
=
n
t=1
(ln Xt ln Yt)
α =
ln Y (ln X)2
− (ln X ln Y ) ln X
n (ln X)2 − ln X ln X
β2 =
n (ln X ln Y ) − ln X ln Y )
n (ln X)2 − ln X ln X
29
As these results show, the elasticity of EXPDUR with respect to PCEX is about
1.90, suggesting that if total personal expenditure goes up by 1 percent, on average,
the expenditure on durable goods goes up by about 1.90 percent.
30

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Econ ch 6

  • 1. LECTURE 5 EXTENSIONS OF THE TWO VARIABLE LINEAR REGRESSION MODEL • Regression through the origin • Functional forms of regression models 1
  • 2. REGRESSION TROUGH THE ORIGN Yi = β2Xi + ui (1) What is CAPM? (ERi − rf) = βi(ERm − rf) (2) ERi = expected rate of return on security i ERm = expected rate of return on the market portfolio as represented by, say, the S&P 500 composite stock index rf = risk–free rate of return, say, the return on 90–day Treasury bills βi = the Beta coefficient, a measure of systematic risk. 2
  • 3. If capital markets work efficiently, then CAPM postulates that security i’s expected risk premium (= ERi −rf) is equal to that security’s β coefficient times the expected market risk premium (= ERm − rf). security market line (SML). s 3
  • 6. FUNCTIONAL FORMS OF REGRESSION MODELS In the sections that follow we consider some commonly used regression models that may be nonlinear in the variables but are linear in the parameters or that can be made so by suitable transformations of the variables. In particular, we discuss the following regression models 1. The log-linear model 2. Semi–log models 3. Reciprocal models 4. The logarithmic reciprocal model 6
  • 7. LOG–LINEAR MODEL Exponential regression model Yi = β1Xβ2 i eui (3) which may be expressed alternatively as ln Yi = ln β1 + β2 ln Xi + ui (4) or ln Yi = α + β2 ln Xi + ui (5) where α = ln β, this model is linear in the parameters α and β2, linear in the loga- rithms of the variables Y and X, and can be estimated by OLS regression. Because of this linearity, such models are called log–log, double–log, or log–linear models. If the assumptions of the classical linear regression model are fulfilled, the parame- ters of (5) can be estimated by the OLS method by letting 7
  • 8. Y ∗ i = α + β2X∗ i + ui (6) where Y ∗ = ln Yi and Xi∗ = ln Xi . The OLS estimators . α and β obtained will be best linear unbiased estimators of α and β, respectively. 8
  • 10. SEMILOG MODELS: LOG–LIN AND LIN–LOG MODELS Economists, business people, and governments are often interested in finding out the rate of growth of certain economic variables, such as population, GNP, money supply, employment, productivity, and trade deficit. etc Yt = Y0(1 + r)r where r is the compound rate of growth of Y ln Yt = ln Y0 + t ln(1 + r) Now letting β1 = ln Y0 β2 = ln(1 + r) so ln Yt = β1 + β2t + εt (7) In this model the slope coefficient measures the constant proportional or relative change in Y for a given absolute change in the value of the regressor. 10
  • 12. LINEAR TREND MODEL Instead of estimating model (7) researchers sometimes estimate the following model: Yt = β1 + β2t + εt (8) (8) is called a linear trend model and the time variable t is known as the trend variable. If the slope coefficient in (8) is positive, there is an upward trend in Y , whereas if it is negative, there is a downward trend in Y . 12
  • 13. LIN–LOG MODEL Suppose you have the data given, where Y is GNP and X is money supply (M2 definition). Next suppose you are interested in finding out by how much (the absolute value of) GNP increases if the money supply increases by say, a percent Yt = β1 + β2 ln Xt + εt (9) For descriptive purposes we call such a model a Lin–Log model. Let us interpret the slope coefficient β2 As usual, β2 = change in Y change in ln X = change in Y relativechange in ln X = ∆Y ∆X/X equivalently ∆Y = β2(∆X/X) 13
  • 15. Reciprocal models Models of the following type are known as reciprocal models Yt = β1 + β2 1 Xt + εt (10)    nβ1 + β2 n t=1 1 Xt = n t=1 Yt β n t=1 1 Xt + β2 n t=1 1 Xt 2 = n t=1 1 Xt Yt β1 = Y (1/X)2 − (1/X · Y ) 1/X n (1/X)2 − 1/X 1/X β2 = n (1/X · Y ) − (1/X · Y ) n (1/X)2 − 1/X 1/X 15
  • 17. 17
  • 18. 18
  • 19. 19
  • 21. 21
  • 22. 22
  • 23. 23
  • 24. 24
  • 25. 25
  • 26. 26
  • 27. 27
  • 28. 28
  • 29. EXDURt = β1PCEXβ2 t or ln EXDURt = α + β2 ln PCEXt    nα + β2 n t=1 ln Xt = n t=1 ln Yt α n t=1 Xt + β2 n t=1 (ln Xt)2 = n t=1 (ln Xt ln Yt) α = ln Y (ln X)2 − (ln X ln Y ) ln X n (ln X)2 − ln X ln X β2 = n (ln X ln Y ) − ln X ln Y ) n (ln X)2 − ln X ln X 29
  • 30. As these results show, the elasticity of EXPDUR with respect to PCEX is about 1.90, suggesting that if total personal expenditure goes up by 1 percent, on average, the expenditure on durable goods goes up by about 1.90 percent. 30