M-GARCH-M in GARCH Wizard
M-GARCH-M in GARCH Wizard
Hello,
How can I estimate a multivariate GARCH in the mean model within the GARCH Wizard?
How can I estimate a multivariate GARCH in the mean model within the GARCH Wizard?
Re: M-GARCH-M in GARCH Wizard
I tried to follow the manual and wrote this code but it does not work I get the message:

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Re: M-GARCH-M in GARCH Wizard
I don't think you can do that using the Wizard, at least currently. You need to define the equations, GROUP them into a MODEL, and supply that via the MODEL option. See page 301 of the RATS 8 User's Guide for details.
Regards,
Tom Maycock
Estima
Regards,
Tom Maycock
Estima
Re: M-GARCH-M in GARCH Wizard
Thank you Tom.
I was hopping to avoid that as I am new to RATS programming and I had already read page UG301 and I came up with the program
I was hopping to avoid that as I am new to RATS programming and I had already read page UG301 and I came up with the program
Code: Select all
CALENDAR(M) 1973:11
OPEN DATA "C:\Users\User\Desktop\110722 Energy RATS\dataus.txt"
DATA(FORMAT=PRN,NOLABELS,ORG=COLUMNS,TOP=2,RIGHT=3) 1973:11 2007:10 DATES OIL IPI
/* PRE-ESTIMATION */
dec symm[series] hhs(2,2)
clear(zeros) hhs
equation oileq oil
# constant hhs(1,1) hhs(1,2)
equation ipieq ipi
# constant hhs(2,1) hhs(2,2)
group garchm oileq ipieq
garch(model=garchm,p=1,q=1,pmethod=simplex,piters=10,$
mvhseries=hhs)
/* ESTIMATION OF THE M-GARCH-M */
GARCH(P=1,Q=1,MV=BEKK,REGRESSORS) / OIL IPI
# Constant OIL IPI HHS(1,1) HHS(2,1) HHS(2,2)Re: M-GARCH-M in GARCH Wizard
The first of the two looks correct. Generally, you only include the "own" covariances in the mean model. The second one clearly is incorrect, because you're including current OIL in the equations---perhaps you mean OIL{1} which would put the lagged value in.
Re: M-GARCH-M in GARCH Wizard
Running the above program I get the following output:
Code: Select all
MV-GARCH, BEKK - Estimation by BFGS
Convergence in 159 Iterations. Final criterion was 0.0000000 <= 0.0000100
Monthly Data From 1973:11 To 2007:10
Usable Observations 408
Log Likelihood 2090.6861
Variable Coeff Std Error T-Stat Signif
***************************************************************************************************************************************************
1. Constant -4.0560e-003 7.6905e-004 -5.27400 0.00000013
2. OIL -0.6627 0.0960 -6.90462 0.00000000
3. IPI 0.0000 0.0000 0.00000 0.00000000
4. HHS(1,1) 0.0000 0.0000 0.00000 0.00000000
5. HHS(2,1) 0.0000 0.0000 0.00000 0.00000000
6. HHS(2,2) 0.0000 0.0000 0.00000 0.00000000
7. ¾OYÃ\݇?øzøÂÚf»>nŸ)ÝHL¿Ã„Ô¤ô²¼?Ðõá0¼>{Õ¾të±?8ÄhL®~¿àÊNŸŠ
U¾Ð¼—šµÔe¾d ÂgÇ|B¾ç‘Àtš—5¿~` -4.9031e+238 0.0000 0.00000 0.00000000
8. Ðõá0¼>{Õ¾të±?8ÄhL®~¿àÊNŸŠ
U¾Ð¼—šµÔe¾d ÂgÇ|B¾ç‘Àtš—5¿~` 4203.2627 0.0000 0.00000 0.00000000
9. ¼—šµÔe¾d ÂgÇ|B¾ç‘Àtš—5¿~` 0.0000 0.0000 0.00000 0.00000000
10. ó–qýì>ð`nŽ}k=?§"=N÷ªì?åv>ÔÖ⾊·øbn¼?]˜9,ÞÔ?>y*è…¦¾o•¤að„¾ê"£|P‡>&}ð(Í?5¿ˆÍžjc 36793.2891 0.0000 0.00000 0.00000000
11. øbn¼?]˜9,ÞÔ?>y*è…¦¾o•¤að„¾ê"£|P‡>&}ð(Í?5¿ˆÍžjc 1.1731e+021 0.0000 0.00000 0.00000000
12. P‡>&}ð(Í?5¿ˆÍžjc -2.5677e+045 0.0000 0.00000 0.00000000
13. C(1,1) -7.2427e-003 1.7902e-003 -4.04579 0.00005215
14. C(2,1) -8.8975e-005 1.6438e-003 -0.05413 0.95683315
15. C(2,2) 2.8661e-006 4.9067e-003 5.84128e-004 0.99953393
16. A(1,1) -0.8041 0.1463 -5.49438 0.00000004
17. A(1,2) -0.2136 0.1126 -1.89697 0.05783225
18. A(2,1) 0.2031 0.2289 0.88734 0.37489799
19. A(2,2) -0.3593 0.1668 -2.15351 0.03127829
20. B(1,1) 1.2237 0.2725 4.49011 0.00000712
21. B(1,2) 1.1514 0.1842 6.25248 0.00000000
22. B(2,1) -0.6243 0.4439 -1.40662 0.15953878
23. B(2,2) -0.9113 0.2513 -3.62565 0.00028824Re: M-GARCH-M in GARCH Wizard
That's out of the second GARCH instruction, which isn't properly formed. The REGRESSORS option was never really designed to work on a multivariate model; instead, you need to use the MODEL option, as is done in your first GARCH.PERRY wrote:Running the above program I get the following output:
Code: Select all
MV-GARCH, BEKK - Estimation by BFGS Convergence in 159 Iterations. Final criterion was 0.0000000 <= 0.0000100 Monthly Data From 1973:11 To 2007:10 Usable Observations 408 Log Likelihood 2090.6861 Variable Coeff Std Error T-Stat Signif *************************************************************************************************************************************************** 1. Constant -4.0560e-003 7.6905e-004 -5.27400 0.00000013 2. OIL -0.6627 0.0960 -6.90462 0.00000000 3. IPI 0.0000 0.0000 0.00000 0.00000000 4. HHS(1,1) 0.0000 0.0000 0.00000 0.00000000 5. HHS(2,1) 0.0000 0.0000 0.00000 0.00000000 6. HHS(2,2) 0.0000 0.0000 0.00000 0.00000000 7. ¾OYÃ\݇?øzøÂÚf»>nŸ)ÝHL¿Ã„Ô¤ô²¼?Ðõá0¼>{Õ¾të±?8ÄhL®~¿àÊNŸŠ U¾Ð¼—šµÔe¾d ÂgÇ|B¾ç‘Àtš—5¿~` -4.9031e+238 0.0000 0.00000 0.00000000 8. Ðõá0¼>{Õ¾të±?8ÄhL®~¿àÊNŸŠ U¾Ð¼—šµÔe¾d ÂgÇ|B¾ç‘Àtš—5¿~` 4203.2627 0.0000 0.00000 0.00000000 9. ¼—šµÔe¾d ÂgÇ|B¾ç‘Àtš—5¿~` 0.0000 0.0000 0.00000 0.00000000 10. ó–qýì>ð`nŽ}k=?§"=N÷ªì?åv>ÔÖ⾊·øbn¼?]˜9,ÞÔ?>y*è…¦¾o•¤að„¾ê"£|P‡>&}ð(Í?5¿ˆÍžjc 36793.2891 0.0000 0.00000 0.00000000 11. øbn¼?]˜9,ÞÔ?>y*è…¦¾o•¤að„¾ê"£|P‡>&}ð(Í?5¿ˆÍžjc 1.1731e+021 0.0000 0.00000 0.00000000 12. P‡>&}ð(Í?5¿ˆÍžjc -2.5677e+045 0.0000 0.00000 0.00000000 13. C(1,1) -7.2427e-003 1.7902e-003 -4.04579 0.00005215 14. C(2,1) -8.8975e-005 1.6438e-003 -0.05413 0.95683315 15. C(2,2) 2.8661e-006 4.9067e-003 5.84128e-004 0.99953393 16. A(1,1) -0.8041 0.1463 -5.49438 0.00000004 17. A(1,2) -0.2136 0.1126 -1.89697 0.05783225 18. A(2,1) 0.2031 0.2289 0.88734 0.37489799 19. A(2,2) -0.3593 0.1668 -2.15351 0.03127829 20. B(1,1) 1.2237 0.2725 4.49011 0.00000712 21. B(1,2) 1.1514 0.1842 6.25248 0.00000000 22. B(2,1) -0.6243 0.4439 -1.40662 0.15953878 23. B(2,2) -0.9113 0.2513 -3.62565 0.00028824
Re: M-GARCH-M in GARCH Wizard
Tom thank you again for all the help, I really appreciate it.TomDoan wrote:The first of the two looks correct. Generally, you
only include the "own" covariances in the mean model. The second one
clearly is incorrect, because you're including current OIL in the
equations---perhaps you mean OIL{1} which would put the lagged value
in.
The program I posted is my impression from page UG301 of how I should
structure a M-GARCH-M. I thought both the first two as you mention and
the last part are needed to estimate the M-GARCH-M for the multivariate
system OIL, IPI.
Regarding the inclusion of the contemporaneous OIL and IPI I did not
notice it was not lagged.
Re: M-GARCH-M in GARCH Wizard
Here is how I modified the code based on the above:
I assume that with the following I manage to create a matrix that will store the initial values and then the actual values for the conditional variances and covariances.
Below I define the two equations that I need for the M-GARCH-M I want to estimate.
I still do not understand how RATS will associate hhs(i,j) with the conditional variances/covariances. It looks like the mean equation of a multivariate GARCH in-the-mean model without any other than the constant and the conditional variances explanatory variables but still hhs(i,j) are not associated with anything...
Next we group the equations into a model labeled "garchm" as you advised:
Finally in the last part of the program we instruct RATS to perform a GARCH(1,1) estimation using the "garchm" model, BEKK specification, preliminary estimation using simplex with 10 iterations.
Is the following the part where RATS stores the conditional variances/covariances in the hss matrix?
That is it? sorry for being so analytical but I am trying to understand the logic. I have been told RATS is very powerful and want to be able to use it for more than standard programs.
Thank you in advance Tom...!!!
Code: Select all
CALENDAR(M) 1973:11
OPEN DATA "C:\Users\User\Desktop\110722 Energy RATS\dataus.txt"
DATA(FORMAT=PRN,NOLABELS,ORG=COLUMNS,TOP=2,RIGHT=3) 1973:11 2007:10
DATES OIL IPICode: Select all
dec symm[series] hhs(2,2)
clear(zeros) hhsI still do not understand how RATS will associate hhs(i,j) with the conditional variances/covariances. It looks like the mean equation of a multivariate GARCH in-the-mean model without any other than the constant and the conditional variances explanatory variables but still hhs(i,j) are not associated with anything...
Code: Select all
equation oileq oil
# constant hhs(1,1) hhs(1,2) hhs(2,1) hhs(2,2)
equation ipieq ipi
# constant hhs(1,1) hhs(1,2) hhs(2,1) hhs(2,2)Code: Select all
group garchm oileq ipieqCode: Select all
garch(model=garchm,p=1,q=1,mv=BEKK,pmethod=simplex,piters=10,$
mvhseries=hhs)Code: Select all
mvhseries=hhsThank you in advance Tom...!!!
Re: M-GARCH-M in GARCH Wizard
Yes. The key is to refer to the same variable name on both the MVHSERIES option and in your equations.PERRY wrote: Is the following the part where RATS stores the conditional variances/covariances in the hss matrix?
Code: Select all
mvhseries=hhs
Regards,
Tom Maycock
Estima
Re: M-GARCH-M in GARCH Wizard
OK now I run the program:
And I got these results:
My main interest in doing this is to see how the conditional variance of OIL affects the mean equation of the IPI.
To make sure I am reading the output correctly, coefficients 1-5 are for the mean equation of OIL and 6-10 for the mean equation for IPI.
Also, 5-21 are for the conditional variances covariances.
They way it is constructed, what is the coefficient I am looking for? It must be coefficient #7 as OIL is the first variable and equation defined and IPI is the second so that
coefficient #7 gives the effect of the conditional variance of OIL in the IPI mean equation.
Am I right?
Thank you so much!
Code: Select all
CALENDAR(M) 1973:11
OPEN DATA "C:\Users\User\Desktop\110722 Energy RATS\dataus.txt"
DATA(FORMAT=PRN,NOLABELS,ORG=COLUMNS,TOP=2,RIGHT=3) 1973:11 2007:10 DATES OIL IPI
/* PRE-ESTIMATION */
dec symm[series] hhs(2,2)
clear(zeros) hhs
equation oileq oil
# constant hhs(1,1) hhs(1,2) hhs(2,1) hhs(2,2)
equation ipieq ipi
# constant hhs(1,1) hhs(1,2) hhs(2,1) hhs(2,2)
group garchm oileq ipieq
garch(model=garchm,p=1,q=1,mv=BEKK,pmethod=simplex,piters=10,$
mvhseries=hhs)
Code: Select all
MV-GARCH, BEKK - Estimation by BFGS
Convergence in 49 Iterations. Final criterion was 0.0000045 <= 0.0000100
Monthly Data From 1973:11 To 2007:10
Usable Observations 408
Log Likelihood 2106.4402
Variable Coeff Std Error T-Stat Signif
************************************************************************************
1. Constant 0.0030665 0.0063040 0.48644 0.62665755
2. HHS(1,1) 2.7241851 1.2881911 2.11474 0.03445239
3. HHS(2,1) -58.0674533 21.4759674 -2.70383 0.00685445
4. HHS(2,1) -57.7541027 21.4759760 -2.68924 0.00716144
5. HHS(2,2) -160.8529558 95.2018502 -1.68960 0.09110469
6. Constant 0.0043623 0.0013002 3.35503 0.00079358
7. HHS(1,1) -0.0427378 0.0812831 -0.52579 0.59903456
8. HHS(2,1) -1.9714207 1.7100354 -1.15285 0.24897043
9. HHS(2,1) -1.9022851 1.7100860 -1.11239 0.26596986
10. HHS(2,2) -20.9218211 20.8896361 -1.00154 0.31656546
11. C(1,1) 0.0079456 0.0014138 5.61989 0.00000002
12. C(2,1) 0.0000917 0.0012644 0.07249 0.94221068
13. C(2,2) 0.0028532 0.0013020 2.19145 0.02841922
14. A(1,1) 0.6897016 0.0710530 9.70686 0.00000000
15. A(1,2) 0.0157191 0.0068716 2.28756 0.02216303
16. A(2,1) -0.0791518 0.3584136 -0.22084 0.82521761
17. A(2,2) 0.4041140 0.1105482 3.65555 0.00025663
18. B(1,1) 0.8050431 0.0306167 26.29421 0.00000000
19. B(1,2) -0.0058133 0.0051301 -1.13319 0.25713322
20. B(2,1) -0.1306640 0.3039599 -0.42987 0.66728833
21. B(2,2) 0.7970205 0.1404967 5.67288 0.00000001
To make sure I am reading the output correctly, coefficients 1-5 are for the mean equation of OIL and 6-10 for the mean equation for IPI.
Also, 5-21 are for the conditional variances covariances.
They way it is constructed, what is the coefficient I am looking for? It must be coefficient #7 as OIL is the first variable and equation defined and IPI is the second so that
coefficient #7 gives the effect of the conditional variance of OIL in the IPI mean equation.
Am I right?
Thank you so much!
Re: M-GARCH-M in GARCH Wizard
Because of symmetry H(2,1) and H(1,2) are the same, so you should leave one out of the regressor list. As you have this set up, yes, the effect of the variance of oil on the mean of IP is coefficient 7.
-
thaotc4ueh
- Posts: 6
- Joined: Sun Mar 08, 2015 11:17 am
Re: M-GARCH-M in GARCH Wizard
Dear TomDoanTomDoan wrote:Because of symmetry H(2,1) and H(1,2) are the same, so you should leave one out of the regressor list. As you have this set up, yes, the effect of the variance of oil on the mean of IP is coefficient 7.
If I use above code, but in my equation there is a asymmetric term,and use quasi-maximum likelihood, what must I add in that code
And how to compute Likelihood ratio to compare univariate garch-m with bivariate garch-m, what can I do
I look forward to here from you
Thao
Re: M-GARCH-M in GARCH Wizard
Just add the ASYMMETRIC option to the GARCH instruction. For QMLE, just add the ROBUSTERRORS option (that's described in the v9 User's Guide in Section 9.3.7).
The test for univariate vs multivariate is very uninteresting. The likelihood for the univariate models doesn't allow for any contemporaneous correlation. Since that is usually rather high (.7 or more), the test will reject overwhelmingly on that basis alone---likelihood ratio statistics on the order of 1000's are fairly common.
The test for univariate vs multivariate is very uninteresting. The likelihood for the univariate models doesn't allow for any contemporaneous correlation. Since that is usually rather high (.7 or more), the test will reject overwhelmingly on that basis alone---likelihood ratio statistics on the order of 1000's are fairly common.
-
thaotc4ueh
- Posts: 6
- Joined: Sun Mar 08, 2015 11:17 am
Re: M-GARCH-M in GARCH Wizard
thank you for your replyTomDoan wrote:Just add the ASYMMETRIC option to the GARCH instruction. For QMLE, just add the ROBUSTERRORS option (that's described in the v9 User's Guide in Section 9.3.7).
The test for univariate vs multivariate is very uninteresting. The likelihood for the univariate models doesn't allow for any contemporaneous correlation. Since that is usually rather high (.7 or more), the test will reject overwhelmingly on that basis alone---likelihood ratio statistics on the order of 1000's are fairly common.
one more question, how can I test 2 equality between 2 coefficient and test(zero) together, different example: H0: h11=h12=0, a11=a12
and how can I export file conditional variance and covariance, conditional correllation,
this is my code:
OPEN DATA "E:\KL\Book1.txt"
CALENDAR(M) 2005:2
DATA(FORMAT=PRN,ORG=COLUMNS) 2005:02 2014:12 MKT IA ROE SMB HML DY RREL
/* PRE-ESTIMATION */
dec symm[series] hhs(2,2)
clear(zeros) hhs
equation mkteq mkt
# constant dy hhs(1,1) hhs(1,2) hhs(2,1) hhs(2,2)
equation iaeq ia
# constant dy hhs(1,1) hhs(1,2) hhs(2,1) hhs(2,2)
group garchm mkteq iaeq
garch(model=garchm,p=1,q=1,asymmetric,ROBUSTERRORS,mv=BEKK,pmethod=simplex,piters=10,$
hmatrices=bekkhh, MVHSERIES=bekkHmatrix, rvectors=bekkrv)
thank alots, I use rats 9 trial.