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Functional%20Form%20and%20Dynamic%20Models

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Title: Functional%20Form%20and%20Dynamic%20Models


1
Functional Form and Dynamic Models
2
Introduction
  • Discuss the importance of functional form
  • Examine the Ramsey Reset Test for Functional Form
  • Describe the use of lags in econometric models
  • Evaluate the Koyk transformation as a means of
    overcoming some of the problems of lagged
    variables

3
Functional Form
  • A further assumption we make about the
    econometric model is that it has the correct
    functional form.
  • This requires the most appropriate variables in
    the model and that they are in the most suitable
    format, i.e. logarithms etc.
  • One of the most important considerations with
    financial data is that we need to model the
    dynamics appropriately, with the most appropriate
    lag structure.

4
Functional Form
  • It is important we include all the relevant
    variables in the model, if we exclude an
    important explanatory variable, the regression
    has omitted variable bias. This means the
    estimates are unreliable and the t and F
    statistics can not be relied on.
  • Equally there can be a problem if we include
    variables that are not relevant, as this can
    reduce the efficiency of the regression, however
    this is not as serious as the omitted variable
    bias.
  • The Ramsey Reset test can be used to determine if
    the functional form of a model is acceptable.

5
Ramsey Reset Test for Functional Form
  • This test is based on running the regression and
    saving the residual as well as the fitted
    values.
  • Then run a secondary regression of the residual
    on powers of these fitted values.

6
Ramsey Reset Test
  • The R-squared statistic is taken from the
    secondary regression and the test statistic
    formed TR-squared.
  • It follows a chi-squared distribution with (p-1)
    degrees of freedom.
  • The null hypothesis is the functional form is
    suitable.
  • If a TR-squared statistic of 7.6 is obtained and
    we had up to the power of 3 in the secondary
    regression, then the critical value for
    chi-squared (2) is 5.99, 7.7gt5.99 so reject the
    null and the functional form is a problem.

7
Lagged Variables
  • A possible source of any problem with the
    functional form is the lack of a lagged structure
    in the model.
  • One way of overcoming autocorrelation is to add a
    lagged dependent variable to the model.
  • However although lagged variables can produce a
    better functional form, we need theoretical
    reasons for including them.

8
Inclusion of Lagged variables
  • Inertia of the dependent variable, whereby a
    change in an explanatory variable does not
    immediately effect the dependent variable.
  • The overreaction to news, particularly common
    in asset markets and often referred to as
    overshooting, where the asset overshoots its
    long-run equilibrium position, before moving back
    towards equilibrium
  • To allow the model to produce dynamic forecasts.

9
Types of Lag
  • Autoregressive refers to lags in the dependent
    variable
  • Distributed lag refers to lags of the explanatory
    variables
  • Moving average refers to lags in the error term
    (covered later).

10
ARDL Models
  • An Autoregressive Distributed lag model or ARDL
    model refers to a model with lags of both the
    dependent and explanatory variables. An ARDL(1,1)
    model would have 1 lag on both variables

11
Differenced Variables
  • A differenced or change variable is used to
    model the change in a variable from one time
    period to the next. This type of variable is
    often used with lagged variables to model the
    short run.

12
The long-run static equilibrium
  • In econometrics the long and short run are
    modelled differently. (later we will use
    cointegration to model this).
  • The long-run equilibrium is defined as when the
    variables have attained some steady-state values
    and are no longer changing.
  • In the long-run we can ignore the lags as

13
Long-Run
  • To obtain the long-run steady-state solution from
    any given model we need to
  • - Remove all time subscripts, including lags
  • - Set the error term equal to its expected
    value of 0.
  • - Remove the differenced terms
  • - Arrange the equation so that all x and y
    terms are on the same side.

14
Long-run
  • For example given the following model, we can use
    the previous rules to form a long-run
    steady-state solution

15
Potential Problems with Lagged Variables
  • The main problem is deciding how many lags to
    include in a model.
  • The use of lagged dependent variables can produce
    some econometric problems.
  • With a number of lags, there can be problems of
    multicollinearity between the lags
  • There can be difficulties with interpreting the
    coefficients on the lags and offering a
    theoretical reason for their inclusion

16
Koyck Distribution
  • The Koyck distribution is a general dynamic model
    with a number of applications.
  • The distribution has the lagged values of the
    explanatory variables declining geometrically. In
    the case of one explanatory variable it follows
    the following form

17
Koyck Distribution
  • The previous model can not be estimated using the
    usual OLS techniques as
  • - There would almost certainly be
    multicolliinearity
  • - There would be multiple estimates of the ß
    and d parameters, so it would be impossible to
    identify its real value.

18
Koyck Transformation
  • It is possible to obtain a model which is easier
    to estimate by performing the Koyck
    transformation.
  • This requires the equation from earlier to be
    lagged and multiplied by d, so the dependent
    variable is now y(t-1).
  • By subtracting this second equation from the
    first, all the lagged values of x cancel out.

19
Koyck Transformation
  • The Koyck transformation produces the following
    model

20
Koyck Transformation
  • The transformed Koyck model produces estimates of
    ß and d, which can then be used to produce
    estimates of the coefficients in the original
    Koyck distribution.
  • This model allows both the short and long run to
    be analysed separately, the previous model is the
    short run, in the long run we ignore the lags and
    error term to produce the following long-run
    model.

21
Koyck Model
  • The long-run model is as follows

22
Koyck Model
  • Although this transformed model appears better
    than the original model it suffers from a
    problem.
  • The lagged dependent variable (y) is now an
    explanatory variable and in the new error term
    there is a lagged error term (u).
  • Given that both these terms appear in the
    original Koyck distribution in non-lagged form
    they must be related.
  • This means the fourth Gauss-Markov assumption is
    failed, leading to biased and inconsistent OLS
    estimates as

23
Koyck Model
  • To obtain unbiased estimates of the parameters in
    the transformed Koyck model, we need to use an
    Instrumental Variable (IV) technique. (This will
    be covered later).
  • Alternatively we could use a non-linear method to
    estimate the original Koyck distribution,
    although this too requires an alternative
    technique to OLS.

24
Koyck Transformation
  • Given the following estimates from a model of
    income (y) on stock prices (s), we can use them
    to interpret the original Koyck distribution on
    which they are based

25
Koyck Transformation
  • The previous estimates can be used to produce
    values for all the original parameters, which can
    then be inputted into the original Koyck
    distribution

26
Long-run
  • These estimates can also be used to produce the
    long-run solution as follows

27
Conclusion
  • It is important to ensure the functional form of
    the econometric model is correct.
  • This may require the inclusion of lags.
  • The use of lags and differenced variables allows
    the examination of the short-run dynamic
    properties of the model.
  • The Koyck distribution is a general model for
    examining the dynamics.
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