Title: The large scale econometric models
1The large scale econometric models
The first large-scale econometric model was built
by Professor Lawrence Klein in the 1950s. The
equations which formed the model represented a
synthetic or artificial economy.The modelwent
through various iterations and evolved into the
MIT-FR-Wharton model
2Uses of the model
- Using this model, it was possible to simulate the
effects of proposed fiscal policy measures such
as increased military spending and tax cuts on a
wide array of aggregate (Y, I, C, S, ...) and
disaggregate level variables (truck sales,
employment in construction trades, cement
prices). - For example, The people who ran the model were
asked to simulate the impact of the proposed
Kennedy-Johnson tax cuts in the early 60s (took
effect in 1964) on a broad array of economic
variables.
3A simple macro model
Consider the following economy
Yt Ct It Gt Xt Mt 5.5
Equation 5.5 can be read as follows Total
output in period t is equal to total spending for
new goods and services in period t , or
consumption plus investment plus government
expenditure plus imports minus exports.
Equation 5.5 is an identitythat is, it is true
by definition
4The behavioral equations
Ct a b(Yt Tt) dPt 1
5.6 Tt e fYt
5.7 It h jYt 1 kRt
5.8 Mt n qYt
5.9 Pt s uYt
vPt 1
5.10
We call these behavioral equations because they
describe the way the way the spending category
has behaved in the past as a function of the
explanatory variables.
5Finding the reduced form
First, we substitute the behavioral equations
5.6 through 5.10 into 5.5 to obtain the
following (we have dropped the t subscripts to
economize on notation)
Y a b(Y e fY) dPt 1 (h jYt-1
kR) G X (n qY)
By rearranging this equation, we obtain the
following reduced form equation
5.11
6Exogenous and endogenous variables
- Exogenous variables are determined outside the
model. They may be know by forecastersor
forecasters may have to forecast them In
our model X, G, and R - Endogenous variables are determined within the
modelspecifically, by equation 5.11 In our
model Y, C, I, T, M, and P
7Forecasting using the reduced form
- The forecaster can estimate the values of a, b,
d, e, f, h, j, k, n, q, s, u, and v with time
series regression analysis. - Pt 1 and Yt 1 are known
- That leaves the exogenous variables Gt, Xt, and
Rt. Perhaps Gt is known. The forecaster will have
to estimate (forecast) the values of the other
exogenous variables
8The Suits modela
The article is noteworthybecause is
educatedeconomists on the newapplications of
econometrics made possible by advances in
computer technology
Y C I G (1) C 20
0.7(Y - T) (2) I 2 .01Yt - 1
(3) T 0.2Y (4)
- The unkown variables are Y, C, I, and T
- The known variables are G and Yt - 1.
aDaniel Suits. Forecasting and Analysis with an
Econometric Model, American Economic Review,
March 1962 104-132.
9A simple national econometric model a
Consider a closed economy with government
GDP C I G
GDP is the dependent variable.Hence, to get
solution for GDP, we mustfirst specify and
estimate models for C, I, and G
a The following is based on A. Migliario. The
National Econometric Model A Laymans Guide,
Graceway Publishing, 1987.
10The aggregate level specifications
GDP t 1 C t 1 I t 1 G t 1
(2) C t 1 ?1 ?2DYt et
(3) I t 1 ?3 ?4it et
(4) G t 1 ?5 ?6Gt b
(5)
- Migliaro used OLS to estimated ?1, ?2, ?3, ?4,
?5, and ?6 - Having accomplished that, he substituted
estimated equations (3), (4), and (5) back into
(2) to get a forecasted value of G t 1. - An example I t 1 11.567 - 0.419it
b Migliaro used the trend component to forecast
G.
11Extending (disaggregating) the model
Let C t 1 DUR t 1 NONDUR t 1
SERVICES t 1
Now let DUR t 1 AUTOS t 1 FURNITURE t
1 APPLIANCES t 1 . . .
Now letAUTOS t 1 Passenger Cars t 1
Vans t 1 Trucks t 1 . . .
12A trucks specification
Trucks t 1 ?1 ?2DYt ?3AGEt ?4PRICEt et
- As we increase the level of disaggregation, we
increase the number of equations.That is, we
could have equations for different classes of
trucks--midsize, etc. - It is the disaggregate level forecasts which are
most valuable tobusiness decision-makers. - Entities such as DRI-McGraw Hill and Chase
econometrics sell disaggregate-level forecasts to
a high-powered client base.
13A lot of equations
- The DRI-McGraw Hill Model has approximately 450
equations. - The FRB-MIT-Wharton model has 669 equations.
- The Chase Econometrics modle has 350 equations
- The Kent model has 44,400 equations.