Title: Introduction to Econometrics
1Introduction to Econometrics
- Lecture 9
- More on Dynamic Models
- Modelling Strategies
2Dynamic model formulations
- Simple delayed effects models
- Distributed lag models and the Koyck
transformation - A review of the Partial Adjustment Mechanism
- Autoregressive models
- Autoregressive Distributed Lag (ADL) models
- Error Correction models (ECM)
3Simple delayed effect models
- Yt a b Xt-1 ut
- Changes in X affect Y but with a known lag (in
this case one period). - Provided the length of the lag is known, or is
easily established, this raises no new problems.
Indeed it can be helpful from a forecasting point
of view because the value of the independent
variable will be known with certainty at the time
when the next forecast of Y is to be made. - EXAMPLE Forecasting employment in Orange County
(California) - EMPt a b RGNPt ut
- where EMPt denotes total employment in the
county in quarter t, - RGNPt-1denotes real GNP for the whole of the US
in the previous quarter. - Source Doti and Adibi (1998)
- Here we can actually exploit the lags in the
relationship for forecasting purposes
4Distributed lag models
- Yt a b0Xt b1 Xt-1 . bsXt-s ut
- where s is the maximum lag allowed for.
- Rather than assume that the whole of the affect
is delayed, this model has the effect distributed
over a number of periods. - Problems establishing the maximum lag s
- loss of degrees of freedom
- possible multicollinearity
- Example. Accidents and safety training Koop
(2000) - Yt a b0Xt b1 Xt-1 .. b4Xt-4 ut
- where Yt losses due to accidents for a company
(/month) - Xt hours of safety training
provided to each worker in month t - A simple regression of Y on X appeared to show
no relationship between these variables -
although the DW stat suggested misspecification. -
5The Koyck transformation
- Suppose that we anticipate a gradual decline in
the affect of X on Y as the number of periods
increase. For example Y might be sales and X
advertising expenditure. If we can assume a
geometric rate of decline and an infinite lag
structure we can use the Koyck transformation to
produce a simple model with just Xt and Yt-1 as
regressors - Writing Yt a b0Xt b1 Xt-1 . bsXt-s
.. ut 1 - If bj1/bj ? for all j (with b0 just b)
- 1 becomes
- Yt a bXt ?bXt-1 . ?sbXt-s ....
ut 2 - Lag 2 by one period and multiply by ?
- ? Yt-1 ? a ? bXt-1 ? 2bXt-2 . ? sbXt-s
. ? ut 3 - Subtract 3 from 2 and rearrange
-
- Yt a(1- ?) bXt ? Yt-1 ut - ? ut-1 4
-
6A review of the partial adjustment model
7A review of the partial adjustment model (2)
8The underlying rationale of the partial
adjustment model
9The underlying rationale of the partial
adjustment model ( 2)
10The Error Correction Mechanism (ECM)
11The simple ECM specification a consumption
function example
12Autoregressive-distributed lag models(ARDL
models)
13An example of an AR model in economics
- Robert E Hall (JPE 1978) suggested that
consumption would follow a simple first-order - autoregressive process if
- (1) consumption depends only upon permanent
income (YP) - (2) agents expectations are formed rationally
- The second assumption means that YPt YPt-1 ?t
where E(?t) 0 - ?t represents the revision made to agents
perceived permanent income in period t. - Individuals out not to expect their permanent
income to change if they did this knowledge - should already have been used to reassess
permanent income so Halls consumption - function is sometimes known as the surprise
consumption function ?t is the surprise. - (1) requires Ct K YPt
- Substituting we find that
- Ct Ct-1 K ?t
- or Ct Ct-1 et
- Consumption should follow a random walk.
14Modelling strategies
The three golden rules of econometrics are test,
test and test. David F. Hendry (1980)
15General to specific modelling
- Begin with a general model which nests the
restricted model and so allows any restrictions
to be tested - These restrictions may be suggested either by
theory or by empirical results
16General to specific modelling (2) diagnostic
testing of the general model
- TEST 1
- First ensure that the general model does not
suffer from any diagnostic problems. Examine the
residuals in the general model to ensure that
they possess acceptable properties. - (Test for problems of autocorrelation,
heteroskedasticity, non-normality, incorrect
functional form etc.)
17General to specific modelling
General to specific modelling (3) testing
restrictions on the general model
- TEST 2
- Now test the restrictions implied by the
specific model against the general model either
by exclusion tests or other tests of linear
restrictions.
18General to specific modelling
General to specific modelling (4) diagnostic
testing of the simple model
- TEST 3
- If the restricted model is accepted, test its
residuals to ensure that this more specific model
is still acceptable on diagnostic grounds
19General to specific modelling (5) the two
blades of the scissors
Test parameter restrictions on the more general
model
Then check diagnostics for the restricted model
20Frequently (and recently) asked questions!
- Should I include all the variables in the
database in my model? - How many explanatory variables do I need in my
model? - How many models do I need to estimate?
- What functional form should I be using?
- Do I need to include lagged variables?
- What are interactive dummies do I need them?
- Which regression model will work best and how do
I arrive at it?
21Typical cross-section model
- Maybe several hundred observations
- Maybe 10-12 potential explanatory variables, some
of which will be dummy variables. - So plenty of degrees of freedom but still lots of
potential models to try, especially if you
consider alternative functional forms,
interactive dummies - Maybe problems of multicollinearity,
heteroskedasticity and non-normality - Model selection is not just a matter of
maximizing Rbar-squared over all possible models
(or some other criterion) - Use economic theory and past studies to identify
core variables - Test exclusion restrictions from a general model
but balanced against misspecification tests.
Informed searches.
22Typical time series model
- Maybe only around a hundred observations
- Maybe four or five potential explanatory
variables, some of which may be dummy variables. - Relatively few degrees of freedom but still lots
of potential models to try, especially if you
consider alternative functional forms, lagged
variables and interactive dummies - As well as problems of multicollinearity,
heteroskedasticity and non-normality there may be
issues of autocorrelation and non-stationarity - Model selection is not just a matter of
maximizing Rbar-squared over all possible models - Use economic theory and past studies to identify
core variables and if possible functional form - Test exclusion and other restrictions from a
general model but balanced against
misspecification tests. Informed searches.