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V3' VECM

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Title: V3' VECM


1
V-3. VECM
  • Johansens MLE
  • Test of cointegration

2
Why Johansens Procedure?
  • Engle and Grangers two step procedure and the
    1-step ECM have concentrated on a single
    equation, with one variable designated as the
    dependent variable, explained by other variables
    that are assumed to be weakly exogenous for the
    parameters of interest.
  • Do you need to model a system?
  • Does the CI vector feed into more than one
    equation?
  • If yes, this is sufficient to violate weak
    exogeneity since CI parameters are inherently
    cross linked.
  • If no, you may legitimately focus on the one
    valid ECM either estimated by OLS or IV.

3
Why Johansens Procedure?
  • Johansens approach allows us to deal with models
    with several endogenous variables and has a
    number of other advantages
  • The procedure begins with an unrestricted VAR
    involving potentially non-stationary variables.
  • A key aspect of the approach is isolating and
    identifying the r cointegrating combinations
    among a set of k integrated variables and
    incorporating them into an empirical model.

4
More generally, a system-based method (of which
Johansen's is the most popular) can provide
several advantages
  • (1) Flexibility
  • to capture a rich dynamic structure and
    interactions
  • (2) Robustness
  • can deal with I(0) and I(1) variables avoiding
    much of the pre-testing problem
  • can cope with testing for and estimating multiple
    cointegrating vectors
  • can capture a wide range of DGPs
  • (3) Ability to test hypotheses
  • can test restricted versions of vectors and
    speeds of adjustment

5
Johansen Approach
  • The appropriate estimation procedure is
  • Step 1 Determining the cointegrating rank
  • Step 2 Determining the factorization P ab
    Estimating the matrix of cointegrating vectors, b
    and the weighting matrix a.
  • Step 3 Estimating the VAR, incorporating the
    cointegrating relations from the previous step.
  • Most attractive approach is the MLE proposed by
    Johansen

6
Johansen Approach
  • Johansen's approach is based on MLE of the VECM,
    by step-wise concentrating the parameters out
  • i.e., maximizing the likelihood function over a
    subset of parameters, treating the other
    parameters as known,
  • given the number r of cointegrating vectors,
    where the matrix b is the last to be concentrated
    out.
  • L(r , b) concentrated likelihood, given r and
    b,
  • br maximum likelihood estimator of b given r ,

7
Johansen Approach
  • Johansen also proposes a likelihood ratio test of
    parametric restrictions on b of the form b Hf,
    where H is a given q s matrix of rank s?r and f
    is an unrestricted s r matrix. For example, in
    the case r 1, q 2, one might wish to test
    whether bT is proportional to (1, -1) HT.
  • The likelihood ratio test statistic
  • has a limiting c2 null distribution with r(q-s)
    degrees of freedom.

8
Procedures for cointegration test
  • Step 1 Regress
  • Regress
  • Step 2 compute S00, S0p, Sp0, and Spp
  • Step 3 solve the equation
  • Find roots or eigenvalues of the polynomial
    equation in l the solution yields the
    eigenvalues l1gtl2gtgt lk and associated
    eigenvector vi,
  • Step 4 for each l, compute the LR statistic

residuals
If rankr ltn, the first r eigenvectors are the
coint vectors the columns of b
H0 at most r cointegrating vectors
9
Two cointegration tests
  • 1. The trace test
  • Sequential tests
  • i. H0 r0, cannot be rejected ?stop
  • (at most zero coint) rejected ?next test
  • ii. H0 rlt1, cannot be rejected ?stop?r1
  • (at most one coint) rejected ?next test
  • iii. H0 rlt2, cannot be rejected ?stop?r2
  • (at most two coint) rejected ?next test
  • Johansen has shown that the first r estimated
    eigenvectors v1, v2,,vr are the MLE of the
    columns of b, the cointegrating vectors.

10
Johansens procedure
  • 2. The lmax test
  • H0 r0 vs. H1 r1 if reject H0 then
  • H1 r1 vs. H2 r2 if reject H1 then
  • H2 r2 vs. H3 r3
  • Hk-1 rk-1 vs. Hk rk

11
Step 5 choosing the appropriate table of
critical values
  • Tables depend on k and deterministic terms
    including intercepts and time trends

Including m in the VECM has two meanings
confining m to the b when data show no evidence
of linear trend
Constants in the b
Linear trends in the data
Linear trend in the b
quadratic trends in the data
12
Which table should we choose?
  • Ruling out impractical models
  • d m0 too restrictive models since at least a
    constant will usually be included in b
  • d ? m ? 0 quadratic trend in the data occurs
    relatively infrequently
  • Linear trend in the data? Check the graph
  • Linear trend in the cointegrating space?
  • See Tables 14.2 14.3 and 14.4

13
Sample 1951 2001 Test assumption Linear
deterministic trend in the data Series
REAL_C01 REAL_Y01 Lags interval 1 to
2 Likelihood 5 Percent 1
Percent Hypothesized Eigenvalue Ratio Critical
Value Critical Value No. of CE(s) 0.228632
12.74889 15.41 20.04 None 0.005994
0.28855 3.76 6.65
At most 1 () denotes rejection of the
hypothesis at 5(1) significance level
L.R. rejects any cointegration at 5 significance
level
14
Unnormalized Cointegrating Coefficients REAL
_C01 REAL_Y01 -3.98E-05 2.58E-05
2.88E-06 2.03E-06 Normalized Cointegrating
Coefficients 1 Cointegrating Equation(s) REA
L_C01 REAL_Y01 C 1.000000 -0.648540
11903.71 (0.02592) Log
likelihood -875.8804
15
Conflicting test results
  • In practice, the results of the two formal tests
    can conflict. Why might this happen?
  • the tests use different information
  • alternative hypotheses differ the maximum
    eigenvalue test has a sharper alternative .
  • Conclusions from Monte Carlo study by Gregory
    (1994)
  • both tests display some size distortion ie. a
    tendency to over reject H0, most likely due to
    overfitting the VAR.
  • size is better for max eigenvalue test (which
    uses just 1 eigenvalue) than for the trace test
    (which uses all eigenvalues).
  • If the results conflict, put more weight on max
    eigenvalue test, but also look at the
    implications of both.

16
Example money demand
  • Hendry and Ericsson (1991) k5 r2
  • Money, m, price index, p, real income, y, own
    interest rate on money, Rm, and opportunity cost
    of holding money, Rb.
  • Two cointegration relationships
  • (m-p-y) stationarity of velocity of circulation
    of money
  • (Rm-b22Rb) the interest spread behavior of
    banking sector set the interest rate on money as
    a mark-down of the opportunity cost of holding
    money

17
Example money demand
  • The baseline VAR ?VECM

Md adjusts to both deviations from equilibrium in
velocity and disequilibrium in interest spread
18
Identification of multiple cointegrating vectors
  • The Johansen procedure allows us to identify the
    number of b. But it lefts us a further problem
  • Identification problem
  • b and bg are two observational equivalent bases
    of the cointegrating space.
  • Before solving the identification problem, no
    meaningful economic interpretation of coeff in
    cointegrating vector can be proposed.
  • We need to impose sufficient number of
    restrictions on parameters such that the matrix
    satisfying such constraints in the cointegrating
    space is unique.

19
Identification of multiple cointegrating vectors
  • Any structure of linear constraint can be
    represented as
  • A necessary and sufficient condition for i-th
    cointegration vector rank (Ribi)r-1. If number
    of cointegrating vector r, there must be at
    least r-1 independent restrictions of the form
    Ribi0 placed on each cointegrating vector

20
Money demand (m-p, y, Rm, Rb)
General representation of matrix ß
Our constraints implying the following matrices
Ri
21
Hypothesis testing
  • The Johansen procedure allows for testing the
    validity of restricted forms of cointegrating
    vectors. The validity of restrictions
    (over-identifying restrictions) in addition to
    those necessary to identify the long-run
    equilibria can be tested.
  • Intuition when there are r cointegrating
    vectors, only these r linear combinations of
    variables are stationary.
  • Test statistics involve comparing the number of
    cointegrating vectors under the null and the
    alternative hypotheses.

22
Testing restrictions on r identified
cointegrating vectors b
  • Let be the ordered
    eigenvalues of the P matrix in the unrestricted
    model, and the
    ordered eigenvalues of the P matrix in the
    restricted model (null).
  • Test statistic

si of freely estimated coeff.
23
Testing restrictions on r identified
cointegrating vectors b
  • Johansen (1992) shows that the statistic has a
    c2-distribution with degree of freedom equal to
    the number of over-identifying restrictions.
  • The smaller values of with respect to
    imply a reduction of the rank of P when the
    restrictions are imposed and hence the rejection
    of null hypothesis.

24
Review
  • Engle-Granger 2-step
  • Johansen
  • VAR

25
Testing and Estimation of the Cointegrating Vector
  • Step 1 Estimate by OLSand check that ?t is
    stationary with a unit root test.
  • Step 2 Construct the zt from step 1 and estimate
    the Error Correction Model the estimated
    parameters are consistent.

26
Full Information, Maximum Likelihood Analysis of
Cointegrated Systems
  • Directly produces the number of cointegrating
    relations
  • Jointly estimates the cointegrating relations and
    the VAR in ECM form.
  • The intuition behind the producer is to test the
    rank of the matrix P in
  • Given the rank of P then we know that the VECM
    becomes
  • The rank of P tells us how many cointegrating
    relations there are.

27
A comment on the specifics of the Johansen test
and Eviews
  • We have seen that the cointegrating vectors are
    not uniquely identified.
  • Eviews normalizes these vectors by solving for
    the first h variables in Yt (i.e., assigns a
    value of 1 to the first variable, then a 1 to the
    second variable and so on).

28
Deterministic Trend Assumptions
  • Intercepts and trends affect the distribution of
    the Johansen test. Therefore, in conducting the
    test, care needs to be taken. Eviews allows the
    following 5 possibilities
  • 1. No deterministic trends in the VAR and the ECM
    has no intercept.Where Xt are deterministic
    variables.
  • 2. No deterministic trends in Y and intercepts in
    the EMC

29
Deterministic Trend Assumptions
  • Y has linear trends and the ECM has
    interceptwhere B? is the orthogonal to matrix
    B.
  • Both Y and ECM have liner trends
  • Y has a quadratic trend and ECM has a trend

30
Modeling a Possibly Non-Stationary VAR in Practice
  • Reference Hamilton pg. 651The particular
    technique to use when modeling a VAR depends
    heavily on the objective pursued.
  • Forecasting in this scenario, we typically have
    little concern for hypothesis testing of
    particular parameter values. Estimating the VAR
    in levels is a good strategy. Choose the VAR lag
    length with an information criterions, such as
    AIC. Then, estimate the VAR. This places the
    least restrictions on the coefficient estimates.
    Test statistics will typically have non-standard
    distributions.

31
Modeling a Possibly Non-Stationary VAR in Practice
  • Structural Analysis this is often the situation
    we are most concerned with.
  • We have seen that blindly differencing the data
    may cause omitted variable bias if there is
    cointegration.
  • A good approach is to check for the stationarity
    of the data with unit root tests. Then the more
    standard procedure is to use a Johansen test and
    model the VECM. Most parameter tests of interest
    will have standard distributions.

32
Supplementary Reading
  • An excellent text book treatment of Johansen
    estimation (and VAR analysis more generally) is
    provided by
  • Walter Enders "Applied Econometric Time Series",
    Ch. 6.
  • For an application of this methodology to
    estimating a money demand equation see
  • David Hendry Dynamic Econometrics 1995 OUP,
    Chapter 16 Econometrics in Action
  • Further examples, including an application to
    modeling imports, can be found in
  • Kerry Patterson An Introduction to Applied
    Econometrics 2000 Macmillan, Chapters 8 and Ch14.
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