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Damodar Gujarati

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Damodar Gujarati Econometrics by Example FURTHER EXTENSIONS OF THE ARCH MODEL GARCH-M Model Explicitly introduce a risk factor, the conditional variance, in the ... – PowerPoint PPT presentation

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Title: Damodar Gujarati


1
CHAPTER 15
  • ASSET PRICE VOLATILITY
  • THE ARCH AND GARCH MODELS

2
VOLATILITY CLUSTERING
  • Volatility Clustering Periods of turbulence in
    which prices show wide swings and periods of
    tranquility in which there is relative calm.
  • Financial time series often exhibit the
    phenomenon of volatility clustering.
  • This results in correlation in error variance
    over time.
  • Use autoregressive conditional heteroscedasticity
    (ARCH) models to take into account such
    correlation or time-varying volatility.

3
THE ARCH MODEL
  • This model shows that conditional on the
    information available up to time (t-1), the value
    of the random variable Y is a function of the
    variable X
  • We assume that given the information available up
    to time (t 1), the error term is independently
    and identically normally distributed with mean
    value of 0 and variance of st2 (heteroscedastic
    variance)
  • Assume that the error variance at time t is equal
    to some constant plus a constant multiplied by
    the squared error term in the previous time
    period
  • where 0 ?1 lt 1

4
THE ARCH MODEL (CONT.)
  • The ARCH(1) model includes only one lagged
    squared value of the error term.
  • An ARCH(p) model has p lagged squared error
    terms, as follows
  • If there is an ARCH effect, it can be tested by
    the statistical significance of the estimated
    coefficients.
  • If they are significantly different from zero, we
    can conclude that there is an ARCH effect.

5
ESTIMATION OF THE ARCH MODEL
  • The Least-squares Approach
  • Once we obtain the squared error term from the
    chosen model, we can estimate the ARCH model by
    the usual least squares method.
  • The Akaike or Schwarz information criterion can
    determine the number of lagged terms to include.
  • Choose the model that gives the lowest value on
    the basis of these criteria
  • The Maximum-likelihood Approach
  • An advantage of the ML method is that we can
    estimate the mean and variance functions
    simultaneously.
  • The mathematical details of the ML method are
    somewhat involved, but statistical packages, such
    as STATA and EVIEWS, have built-in routines to
    estimate the ARCH models.

6
DRAWBACKS OF THE ARCH MODEL
  • 1. The ARCH model requires estimation of the
    coefficients of p autoregressive terms, which can
    consume several degrees of freedom.
  • 2. It is often difficult to interpret all the
    coefficients, especially if some of them are
    negative.
  • 3. The OLS estimating procedure does not lend
    itself to estimate the mean and variance
    functions simultaneously.
  • Therefore, the literature suggests that an ARCH
    model higher than ARCH (3) is better estimated by
    the Generalized Autoregressive Conditional
    Heteroscedasticity (GARCH) model.

7
THE GARCH MODEL
  • In its simplest form, the variance equation in
    the GARCH model is modified as follows
  • This is known as the GARCH (1,1) model.
  • The ARCH (p) model is equivalent to GARCH (1,1)
    as p increases.
  • Note that in the ARCH (p) we have to estimate
    (p1) coefficients, whereas in the GARCH (1,1)
    model given in we have to estimate only three
    coefficients.
  • The GARCH (1,1) model can be generalized to the
    GARCH (p, q) model with p lagged squared error
    terms and q lagged conditional variance terms,
    but in practice GARCH (1,1) has proved useful to
    model returns on financial assets.

8
FURTHER EXTENSIONS OF THE ARCH MODEL
  • GARCH-M Model
  • Explicitly introduce a risk factor, the
    conditional variance, in the original regression
  • This is called the GARCH-M (1,1) model.
  • Further Extensions of ARCH and GARCH Models
  • AARCH, SAARCH, TARCH, NARCH, NARCHK, EARCH, are
    all variants of the ARCH and GARCH models.
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