STAT 497 LECTURE NOTES 5 - PowerPoint PPT Presentation

1 / 51
About This Presentation
Title:

STAT 497 LECTURE NOTES 5

Description:

STAT 497 LECTURE NOTES 5 UNIT ROOT TESTS * ADF TEST EXAMPLE: n=54 Examine the original model and the differenced one to determine the order of AR parameters. – PowerPoint PPT presentation

Number of Views:173
Avg rating:3.0/5.0
Slides: 52
Provided by: Cey2
Category:

less

Transcript and Presenter's Notes

Title: STAT 497 LECTURE NOTES 5


1
STAT 497LECTURE NOTES 5
  • UNIT ROOT TESTS

2
UNIT ROOTS IN TIME SERIES MODELS
  • Shock is usually used to describe an unexpected
    change in a variable or in the value of the error
    terms at a particular time period.
  • When we have a stationary system, effect of a
    shock will die out gradually.
  • When we have a non-stationary system, effect of a
    shock is permanent.

3
UNIT ROOTS IN TIME SERIES MODELS
  • Two types of non-stationarity
  • Unit root i.e.,?i 1 homogeneous
    non-stationarity
  • ?i gt 1 explosive non-stationarity
  • Shock to the system become more influential as
    time goes on.
  • Can never be seen in real life

4
UNIT ROOTS IN TIME SERIES MODELS
e.g. AR(1)
5
UNIT ROOTS IN TIME SERIES MODELS
  • A root near 1 of the AR polynomial
  • ?differencing
  • A root near 1 of the MA polynomial
  • ?over-differencing

6
UNIT ROOTS IN AUTOREGRESSION
  • DICKEY-FULLER (DF) TEST The simplest approach to
    test for a unit root begins with AR(1) model
  • DF test actually does not consider ?0 in the
    model, but actually model with ?0 and not ?0
    gives different results.

7
DF TEST
  • Consider the hypothesis
  • The hypothesis is the reverse of KPSS test.

8
DF TEST
  • To simplify the computation, subtract Yt-1 from
    both sides of the AR(1) model
  • If ?0, system has a unit root.

9
DF TEST
  • DF (1979)

10
DF TEST
  • Applying OLS method and finding the estimator
    for ?, the test statistic is given by
  • The test is a one-sided left tail test. If Yt
    is stationary (i.e.,f lt 1) then it can be shown
  • This means that under H0, the limiting
    distribution of t?1 is N(0,1).

11
DF TEST
  • Under the null hypothesis,
  • which does not make any sense. Under the unit
    root null, Yt is not stationary and ergodic,
    and the usual sample moments do not converge to
    fixed constants. Instead, Phillips (1987) showed
    that the sample moments of Yt converge to
    random functions of Brownian motion

12
DF TEST

where W(r) denotes a standard Brownian motion
(Wiener process) defined on the unit interval.
13
DF TEST
  • Using the above results Phillips showed that
    under the unit root null H0 f 1

14
DF TEST
  • SOME RESULTS
  • is super-consistent that is, at
    rate n instead of the usual rate.
  • is not asymptotically normally distributed and
    tf1 is not asymptotically standard normal.
  • The limiting distribution of tf1 is called the
    Dickey-Fuller (DF) distribution and does not have
    a closed form representation. Consequently,
    quantiles of the distribution must be computed by
    numerical approximation or by simulation.

15
DF TEST
  • Since the normalized bias (n?1)( - 1) has a
    well defined limiting distribution that does not
    depend on nuisance parameters it can also be used
    as a test statistic for the null hypothesis H0
    f 1.

16
DF TEST
  • EXAMPLE

?0.05
Critical value ?7.3 for n25 ?7.7 for n50
Not reject H0. There exist a unit root. We need
to take a difference to be able to estimate a
model for the series
17
DF TEST
  • With a constant term
  • The test regression is
  • and includes a constant to capture the nonzero
    mean under the alternative. The hypotheses to be
    tested
  • This formulation is appropriate for non-trending
    economic and financial series like interest
    rates, exchange rates and spreads.

18
DF TEST
  • The test statistics tf1 and (n-1)( - 1) are
    computed from the above regression. Under
  • H0 f 1, c 0 the asymptotic distributions
    of these test statistics are influenced by the
    presence, but not the coefficient value, of the
    constant in the test regression

19
DF TEST

Inclusion of a constant pushes the distributions
of tf1 and (n?1) ( - 1) to the left.
20
DF TEST
  • With constant and trend term
  • The test regression is
  • and includes a constant and deterministic time
    trend to capture the deterministic trend under
    the alternative. The hypotheses to be tested

21
DF TEST
  • This formulation is appropriate for trending time
    series like asset prices or the levels of
    macroeconomic aggregates like real GDP. The test
    statistics tf1 and (n - 1) ( - 1) are
    computed from the above regression.
  • Under H0 f 1, d 0 the asymptotic
    distributions of these test statistics are
    influenced by the presence but not the
    coefficient values of the constant and time trend
    in the test regression.

22
DF TEST

23
DF TEST
  • The inclusion of a constant and trend in the test
    regression further shifts the distributions of
    tf1 and (n - 1)( - 1) to the left.

24
DF TEST
  • What do we conclude if H0 is not rejected? The
    series contains a unit root, but is that it? No!
    What if YtI(2)? We would still not have
    rejected. So we now need to test
  • H0 YtI(2) vs. H1 YtI(1)
  • We would continue to test for a further unit root
    until we rejected H0.

25
DF TEST
  • This test is valid only if at is WN. If there is
    a serial correlation, the test should be
    augmented. So, check for possible autoregression
    in at.
  • Many economic and financial time series have a
    more complicated dynamic structure than is
    captured by a simple AR(1) model.
  • Said and Dickey (1984) augment the basic
    autoregressive unit root test to accommodate
    general ARMA(p, q) models with unknown orders and
    their test is referred to as the augmented
    Dickey- Fuller (ADF) test

26
AUGMENTED DICKEY-FULLER (ADF) TEST
  • If serial correlation exists in the DF test
    equation (i.e., if the true model is nor AR(1)),
    then use AR(p) to get rid of the serial
    correlation.

27
ADF TEST
  • To test for a unit root, we assume that

28
ADF TEST
  • Hence, testing for a unit root is equivalent to
    testing ?1 in the following model

or
29
ADF TEST
  • Hypothesis

Reject H0 if t?1ltCV
Reject H0 if t?0ltCV
  • We can also use the following test statistics

30
ADF TEST
  • The limiting distribution of the test statistic
  • is non-standard distribution (function of
    Brownian motion _ or Wiener process).

31
Choosing the Lag Length for the ADF Test
  • An important practical issue for the
    implementation of the ADF test is the
    specification of the lag length p. If p is too
    small, then the remaining serial correlation in
    the errors will bias the test. If p is too large,
    then the power of the test will suffer.

32
Choosing the Lag Length for the ADF Test
  • Ng and Perron (1995) suggest the following data
    dependent lag length selection procedure that
    results in stable size of the test and minimal
    power loss
  • First, set an upper bound pmax for p. Next,
    estimate the ADF test regression with p pmax.
    If the absolute value of the t-statistic for
    testing the significance of the last lagged
    difference is greater than 1.6, then set p pmax
    and perform the unit root test. Otherwise, reduce
    the lag length by one and repeat the process.

33
Choosing the Lag Length for the ADF Test
  • A useful rule of thumb for determining pmax,
    suggested by Schwert (1989), is
  • where x denotes the integer part of x. This
    choice allows pmax to grow with the sample so
    that the ADF test regressions are valid if the
    errors follow an ARMA process with unknown order.

34
ADF TEST
  • EXAMPLE n54
  • Examine the original model and the differenced
    one to determine the order of AR parameters. For
    this example, p3.
  • Fit the model with t 4, 5,, 54.

35
ADF TEST
  • EXAMPLE (contd.) Under H0,

n50, CV-13.3
  • H0 cannot be rejected. There is a unit root. The
    series should be differenced.

36
ADF TEST
  • If the test statistics is positive, you can
    automatically decide to not reject the null
    hypothesis of unit root.
  • Augmented model can be extended to allow MA terms
    in at. It is generally believed that MA terms are
    present in many macroeconomic time series after
    differencing. Said and Dickey (1984) developed an
    approach in which the orders of the AR and MA
    components in the error terms are unknown, but
    can be approximated by an AR(k) process where k
    is large enough to allow good approximation to
    the unknown ARMA(p,q) process.

37
ADF TEST
  • Ensuring that at is approximately WN

38
PHILLIPS-PERRON (PP) UNIT ROOT TEST
  • Phillips and Perron (1988) have developed a more
    comprehensive theory of unit root
    nonstationarity. The tests are similar to ADF
    tests. The Phillips-Perron (PP) unit root tests
    differ from the ADF tests mainly in how they deal
    with serial correlation and heteroskedasticity in
    the errors. In particular, where the ADF tests
    use a parametric autoregression to approximate
    the ARMA structure of the errors in the test
    regression, the PP tests ignore any serial
    correlation in the test regression.
  • The tests usually give the same conclusions as
    the ADF tests, and the calculation of the test
    statistics is complex.

39
PP TEST
  • Consider a model
  • DF at iid
  • PP at serially correlated
  • Add a correction factor to the DF test statistic.
    (ADF is to add lagged ?Yt to whiten the
    serially correlated residuals)

40
PP TEST
  • The hypothesis to be tested

41
PP TEST
  • The PP tests correct for any serial correlation
    and heteroskedasticity in the errors at of the
    test regression by directly modifying the test
    statistics t?0 and . These modified
    statistics, denoted Zt and Z?, are given by

The terms and are consistent estimates
of the variance parameters
42
PP TEST
  • Under the null hypothesis that ? 0, the PP Zt
    and Z? statistics have the same asymptotic
    distributions as the ADF t-statistic and
    normalized bias statistics.
  • One advantage of the PP tests over the ADF tests
    is that the PP tests are robust to general forms
    of heteroskedasticity in the error term at.
    Another advantage is that the user does not have
    to specify a lag length for the test regression.

43
PROBLEM OF PP TEST
  • On the other hand, the PP tests tend to be more
    powerful but, also subject to more severe size
    distortions
  • Size problem actual size is larger than the
    nominal one when autocorrelations of at are
    negative.
  • more sensitive to model misspecification (the
    order of autoregressive and moving average
    components).
  • Plotting ACFs help us to detect the potential
    size problem
  • Economic time series sometimes have negative
    autocorrelations especially at lag one, we can
    use a Monte Carlo analysis to simulate the
    appropriate critical values, which may not be
    attractive to do.

44
Criticism of Dickey-Fuller and Phillips-Perron
Type Tests
  • Main criticism is that the power of the tests is
    low if the process is stationary but with a root
    close to the non-stationary boundary.
  • e.g. the tests are poor at deciding if f1 or
    f0.95, especially with small sample sizes.
  • If the true data generating process (dgp) is
  • Yt 0.95Yt-1 at
  • then the null hypothesis of a unit root should
    be rejected.
  • One way to get around this is to use a
    stationarity test (like KPSS test) as well as the
    unit root tests we have looked at (like ADF or
    PP).

45
Criticism of Dickey-Fuller and Phillips-Perron
Type Tests
  • The ADF and PP unit root tests are known (from
    MC simulations) to suffer potentially severe
    finite sample power and size problems.
  • 1. Power The ADF and PP tests are known to
    have low power against the alternative hypothesis
    that the series is stationary (or TS) with a
    large autoregressive root. (See, e.g., DeJong, et
    al, J. of Econometrics, 1992.)
  • 2. Size The ADF and PP tests are known to
    have severe size distortion (in the direction of
    over-rejecting the null) when the series has a
    large negative moving average root. (See, e.g.,
    Schwert. JBES, 1989 MA -0.8, size 100!)

46
Criticism of Dickey-Fuller and Phillips-Perron
Type Tests
  • A variety of alternative procedures have been
    proposed that try to resolve these problems,
    particularly, the power problem, but the ADF and
    PP tests continue to be the most widely used unit
    root tests. That may be changing!

47
STRUCTURAL BREAKS
  • A stationary time-series may look like
    nonstationary when there are structural breaks in
    the intercept or trend
  • The unit root tests lead to false non-rejection
    of the null when we dont consider the structural
    breaks ? low power
  • A single breakpoint is introduced in Perron
    (1989) into the regression model Perron (1997)
    extended it to a case of unknown breakpoint
  • Perron, P., (1989), The Great Crash, the Oil
    Price Shock and the Unit Root Hypothesis,
    Econometrica, 57, 13611401.

48
STRUCTURAL BREAKS
  • Consider the null and alternative hypotheses
  • H0 Yt a0 Yt-1 µ1DP at
  • H1 Yt a0 a2t µ2DL at
  • Pulse break DP 1 if t TB 1 and zero
    otherwise,
  • Level break DL 0 for t 1, . . . , TB and one
    otherwise.
  • Null Yt contains a unit root with a onetime
    jump in the level of the series at time t TB
    1 .
  • Alternative Yt is trend stationary with a
    onetime jump in the intercept at time t TB 1
    .

49
Simulated unit root and trend stationary
processes with structural break.
  • H0 ------
  • a0 0.5,
  • DP 1 for n 51 zero otherwise,
  • µ1 10.

n 100 at i.i.d. N(0,1) y00
  • H1
  • a2 0.5,
  • DL 1 for n gt 50.
  • µ2 10

50
Power of ADF tests Rejection frequencies of
ADFtests
  • ADF tests are biased toward non-rejection of the
    null.
  • Rejection frequency is inversely related to the
    magnitude of the shift.
  • Perron estimated values of the autoregressive
    parameter in the DickeyFuller regression was
    biased toward unity and that this bias increased
    as the magnitude of the break increased.

51
Testing for unit roots when there are structural
changes
  • Perron suggests running the following OLS
    regression
  • H0 a1 1 tratio, DF unit root test.
  • Perron shows that the asymptotic distribution of
    the t-statistic depends on the location of the
    structural break, ? TB/n
  • critical values are supplied in Perron (1989) for
    different assumptions about l, see Table IV.B.
Write a Comment
User Comments (0)
About PowerShow.com