Return-Path: Received: from zaphod.bc.edu (zaphod.bc.edu [136.167.2.207]) by monet.bc.edu (8.8.7/8.8.7) with ESMTP id LAA162980 for ; Wed, 1 Nov 2000 11:12:29 -0500 From: maiser@efs.mq.edu.au Received: (from root@localhost) by zaphod.bc.edu (8.8.7/8.8.7) with X.500 id LAA910042 for baum@mail1.bc.edu; Wed, 1 Nov 2000 11:12:29 -0500 Received: from sunb.ocs.mq.edu.au (sunb.ocs.mq.edu.au [137.111.1.11]) by zaphod.bc.edu (8.8.7/8.8.7) with ESMTP id LAA912174 for ; Wed, 1 Nov 2000 11:12:23 -0500 Received: from efs01.efs.mq.edu.au (EFS01.efs.mq.edu.au [137.111.64.21]) by sunb.ocs.mq.edu.au (8.10.2/8.10.2) with ESMTP id eA1GCHP06111 for ; Thu, 2 Nov 2000 03:12:17 +1100 (EST) Received: from EFS01/SpoolDir by efs01.efs.mq.edu.au (Mercury 1.40); 2 Nov 100 03:12:10 GMT+1000 Received: from SpoolDir by EFS01 (Mercury 1.40); 2 Nov 100 03:12:09 GMT+1000 To: baum@bc.edu Date: Thu, 2 Nov 100 3:12:09 GMT+1000 Subject: Re: Message-ID: <95BC161215@efs01.efs.mq.edu.au> From: Jen Riley To: "RATS Discussion List" Subject: Hansen & Hodrick adjustment for residual autocorrelation Date: Tue, 3 Oct 2000 16:35:35 +1000 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: MIME-Version: 1.0 X-Mailer: Internet Mail Service (5.5.2448.0) (via Mercury MTS (Bindery) v1.40) Content-Type: multipart/mixed; This message is in MIME format. Since your mail reader does not understand this format, some or all of this message may not be legible. ------_=_NextPart_000_01C02D04.237628B0 Content-Type: text/plain; charset="iso-8859-1" Hi, I'm looking for RATS code(s) for Hansen & Hodrick (1980), "Forward exchange rates as optimal predictors of future spot rates: an econometric analysis", Journal of Political Economy, 88(5). I'm also looking for the procedure adf.src. Many thanks. 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MIME-Version: 1.0 X-Mailer: Internet Mail Service (5.5.2650.21) (via Mercury MTS (Bindery) v1.40) Content-Type: text/plain; Content-Transfer-Encoding: 7bit Somebody please correct me if I'm wrong, because its been a while. But Hansen-Hodrick is quite easy. Just use linreg(robusterrors,lags=L) where L is the order of the moving average term Theoretically, if you are doing a 12-month ahead forecast L should be 12 Usually this should work fine, but if it fails to execute you can add a value for the damping window (damp=1 is Newey-West). See page 14-158 of the version 4 manual for some assistance. For adf, try URADF.SRC on the estima web site Procs/Examples. Hope this helps. Gerald Cohen Gerald D. Cohen Vice President & Senior Economist Merrill Lynch 4 World Financial Center 21st Floor New York, NY 10080 212.449.0938 Fax: 212.449.8133 Gerald_Cohen@ml.com > -----Original Message----- > From: Jen Riley [SMTP:JenR@ORGO.CAD.GU.EDU.AU] > Sent: Tuesday, October 03, 2000 2:36 AM > To: RATS Discussion List > Subject: Hansen & Hodrick adjustment for residual autocorrelation > > Hi, > > I'm looking for RATS code(s) for Hansen & Hodrick (1980), "Forward > exchange > rates as optimal predictors of future spot rates: an econometric > analysis", > Journal of Political Economy, 88(5). > > I'm also looking for the procedure adf.src. > > Many thanks. > > Jen Riley ---------- End of message ---------- From: Joachim Tan To: "RATS Discussion List" Subject: Hausman's (1978) Test Date: 4 Oct 00 11:34:47 WST Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: X-Mailer: USANET web-mailer (34FM.0700.4.03) (via Mercury MTS (Bindery) v1.40) Mime-Version: 1.0 Content-Type: text/plain; charset=US-ASCII Content-Transfer-Encoding: quoted-printable Hello, I was wondering if any one has a source file that can run a Hausman's (19= 78) specification test (testing if the regression is misspecified) that is mentioned in the article below : Huang and Jo (1988) Tests of Market Models : Heteroskedasticity or Misspecification ? Journal of Banking and Finance, Sept pg 439-456 Huang and Jo uses an interesting method to test (similar to testing the d= one by Fama and Macbeth (1973), in testing the Capital Asset Pricing model (C= APM) and the market model using ranked betas as the additional regressor) Hausman's (1978) original article Title : Specification Tests in Econometrics Econometrica 50, May pg 749-759 If someone knows where I could find this source or somewhat similar I wou= ld be most grateful. Thanks Joachim = ____________________________________________________________________ Get free email and a permanent address at http://www.netaddress.com/?N=3D= 1 ---------- End of message ---------- From: "T. Okawa" To: "RATS Discussion List" Subject: Simple Question about Matrix Operation Date: Thu, 05 Oct 2000 21:26:23 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: MIME-version: 1.0 Content-type: MULTIPART/ALTERNATIVE; X-Mailer: Mercury MTS (Bindery) v1.40 --Boundary_(ID_l3CFoVM53b78vLKQ10Iupg) Content-type: text/plain; charset=us-ascii; format=flowed Content-transfer-encoding: 7BIT Dear RATS users, Hello. I have a simple question. In SHAZAM and GAUSS, we can use "|" to combine two matrices into one if they have the same number of rows. Suppose A is an n x 2 and B is an n x 3 matrices, respectively. How can I combine A and B to make C, which will be an n x 5 matrix? With SHAZAM we could just write 'MATRIX C = A | B'. Thanks a lot in advance, T. Okawa U of Oklahoma --Boundary_(ID_l3CFoVM53b78vLKQ10Iupg) Content-type: text/html; charset=us-ascii Content-transfer-encoding: 7BIT Simple Question about Matrix Operation
Dear RATS users,

Hello.
I have a simple question.  In SHAZAM and GAUSS, we can use "|" to combine two matrices into one if they have the same number of rows.  Suppose A is an n x 2 and B is an n x 3 matrices, respectively.  How can I combine A and B to make C, which will be an n x 5 matrix?  With SHAZAM we could just write 'MATRIX C = A | B'.

Thanks a lot in advance,

T. Okawa
U of Oklahoma
--Boundary_(ID_l3CFoVM53b78vLKQ10Iupg)-- ---------- End of message ---------- From: "T. Okawa" To: "RATS Discussion List" Subject: Please disregard: Simple Question about Matrix Operation Date: Fri, 06 Oct 2000 06:20:19 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: MIME-version: 1.0 Content-type: text/plain; charset=us-ascii; format=flowed Content-transfer-encoding: 7BIT X-Mailer: Mercury MTS (Bindery) v1.40 I guess the solution is use of 'make.' Thanks, >Dear RATS users, > >Hello. > >I have a simple question. In SHAZAM and GAUSS, we can use "|" to >combine two matrices into one if they have the same number of rows. >Suppose A is an n x 2 and B is an n x 3 matrices, respectively. How >can I combine A and B to make C, which will be an n x 5 matrix? >With SHAZAM we could just write 'MATRIX C = A | B'. > >Thanks a lot in advance, > >T. Okawa >U of Oklahoma ---------- End of message ---------- From: "T. Okawa" To: "RATS Discussion List" Subject: Somebody, help.................... Date: Fri, 06 Oct 2000 09:49:37 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: MIME-version: 1.0 Content-type: MULTIPART/MIXED; BOUNDARY="Boundary_(ID_xnBfJOpscf4TNYLWe5j87w)" X-Mailer: Mercury MTS (Bindery) v1.40 --Boundary_(ID_xnBfJOpscf4TNYLWe5j87w) Content-type: text/plain; charset=us-ascii; format=flowed Content-transfer-encoding: 7BIT Dear RATS users, Hello. Somebody, please help me compute sigmavv, sigmaxv, sigmavx, sigmaxx, L1xv, L1vv, L1xx, L1vx, L2xv, L2vv, L2xx and L2vx. I suppose lambda equals transpose (lambda). Please see the attached PDF, which is created by the Mac version of Adobe Acrobat, for more detail. This is part of fully modified least absolute deviations by Phillips (Econometric Theory, 1995, v. 11, pp. 912-951). ======================================================================== CAL(WEEKLY) 1979 1 26 ALL 1989:11:3 open data b:DATA data(format=prn,org=obs) / BSP B1M B2M B3M B6M B12M CSP C1M C2M C3M C6M C12M DSP D1M D2M D3M D6M D12M JSP J1M J2M J3M J6M J12M SET Y = BSP SET X = B1M * LEAST ABSOLUTE DEVIATIONS * LINREG(ROBUSTERRORS) Y / RESIDS # CONSTANT X * COMPUTE C=SQRT(%SEESQ) DEC VECTOR BETA0 SET SPREAD = 1.0 DO ITERS=1,10 COMPUTE BETA0=%BETA SET SPREAD = SQRT(C**2+RESIDS**2) LINREG(NOPRINT,SPREAD=SPREAD) Y / RESIDS # CONSTANT X IF %TESTDIFF(BETA0,%BETA)<.0001 BREAK END DO ITERS SET F = RESIDS/SPREAD SET FPRIME = C**2/SPREAD**3 MCOV(MATRIX=B,LASTREG) / F MCOV(MATRIX=A,LASTREG,NOSQUARE) / FPRIME COMPUTE %XX=%MQFORM(B,INV(A)) LINREG(CREATE,NOSCALE,LASTREG) RESIDS * LEAST ABSOLUTE DEVIATIONS * SET VTHAT = SIN(RESIDS) COMPUTE NOBS = %NOBS DIFF X / UXT MAKE WT # VTHAT UXT ======================================================================== Thank you. Sincerely, T. 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Win32 (v3.11) (via Mercury MTS (Bindery) v1.40) > I guess the solution is use of 'make.' Not really--MAKE is for combining series into an array. You could take the values from your arrays and copy them to series and then use MAKE, but... With version 4, the easiest way is to use EWISE. Here's a general example: compute r=%rows(a), c1=%cols(a), c2 = %cols(b) declare rect ab(r,c1+c2) ewise ab(i,j) = %if(j<=c1, a(i,j), b(i,j-c1)) In Version 5, you'd be able to do it with one function call. I'd have to double-check the syntax, but I believe it's: compute abnew = %blockglue(||a | b||) Sincerely, Tom Maycock Estima -- ------------------------------------------------------------ | Estima | Sales: (800) 822-8038 | | P.O. Box 1818 | (847) 864-8772 | | Evanston, IL 60204-1818 | Support: (847) 864-1910 | | USA | Fax: (847) 864-6221 | | http://www.estima.com | estima@estima.com | ------------------------------------------------------------ ---------- End of message ---------- From: Ballayram To: "RATS Discussion List" Subject: Stacking one series upon another Date: Mon, 09 Oct 2000 01:34:59 -0400 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: X-Mailer: Mozilla 4.74 [en] (Win95; U) (via Mercury MTS (Bindery) v1.40) MIME-Version: 1.0 Content-Type: text/plain; charset=us-ascii Content-Transfer-Encoding: 7bit Hello Rats Users, I would like to stack one data series upon another, but cannot find the appropriate command in the RATS manual. In particular, I have GNP1 (1962-1979), and forecasted the series to 1999. I would now like to create a single series, (GNP), in which the forcast is appended on to GNP1.Your help would be appreciated. Sincerely, Ballayram ---------- End of message ---------- From: virginie traclet To: "RATS Discussion List" Subject: simulations Date: Mon, 09 Oct 2000 13:32:07 +0200 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: X-Mailer: QUALCOMM Windows Eudora Pro Version 4.0.2 (via Mercury MTS (Bindery) v1.40) Mime-Version: 1.0 Content-Type: text/plain; charset="us-ascii" Dear RATS users, I'm doing counterfactual simulations with VAR in which I replace one regression by a monetary policy rule . For this I first estimate a VAR and save residuals (except the ones from the equation I replace by the rule) . I then use the forecast instruction in which I use my historical residuals as shocks in order to simulate the effects of the implementation of the rule : do you know if the the orthogonalization of these residuals is made by a Cholesky factorization, like in impulse and errors instructions ? I thank you in advance for your help, Best regards, Virginie ************************************************************************** TRACLET Virginie CREREG 7 Place Hoche - CS 86514 Tel. : +33 (0)2-99-25-35-45 35065 Rennes Cedex Fax. : +33 (0)2-99-38-80-84 France E-mail : virginie.traclet@univ-rennes1.fr ************************************************************************** ---------- End of message ---------- From: "Vasquez Escobar Diego M." To: "RATS Discussion List" Subject: RE: Stacking one series upon another Date: Mon, 9 Oct 2000 08:31:28 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: MIME-Version: 1.0 X-Mailer: Internet Mail Service (5.5.2650.21) (via Mercury MTS (Bindery) v1.40) Content-Type: text/plain; Content-Transfer-Encoding: quoted-printable =A1HI! I belive all you have to do is: Modify your ALLOCATE to include 1999 DATA, then create a new series so: SET GNP 1962 1979 =3D GNP1 SET GNP 1980 1999 =3D FGNP1 Where, FGNP1 it's the forecasted GNP1 series. Just print the GNP series. =20 I hope this could help you. Best regards. -----Mensaje original----- De: Ballayram [mailto:ballay@ufl.edu] Enviado el: lunes 9 de octubre de 2000 0:35 Para: RATS Discussion List Asunto: Stacking one series upon another Hello Rats Users, I would like to stack one data series upon another, but cannot find the appropriate command in the RATS manual. In particular, I have GNP1 (1962-1979), and forecasted the series to 1999. I would now like to create a single series, (GNP), in which the forcast is appended on to GNP1.Your help would be appreciated. Sincerely, Ballayram ---------- End of message ---------- From: "Estima" To: "RATS Discussion List" Subject: RE: Stacking one series upon another Date: Mon, 9 Oct 2000 10:14:15 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: Organization: Estima MIME-Version: 1.0 Content-type: text/plain; charset=US-ASCII Content-transfer-encoding: 7BIT X-mailer: Pegasus Mail for Win32 (v3.11) (via Mercury MTS (Bindery) v1.40) > I belive all you have to do is: > > Modify your ALLOCATE to include 1999 DATA, then create a new series so: > > SET GNP 1962 1979 = GNP1 > SET GNP 1980 1999 = FGNP1 > > Where, FGNP1 it's the forecasted GNP1 series. > Just print the GNP series. > Don't forget the ":1" at the end of the dates if using annual data: SET GNP 1962:1 1979:1 = GNP1 SET GNP 1980:1 1999:1 = FGNP1 You can also do this sort of thing using one SET instruction and the %IF function: set gnp = %if(t<1980:1, gnp1, fngp1) Tom Maycock Estima -- ------------------------------------------------------------ | Estima | Sales: (800) 822-8038 | | P.O. Box 1818 | (847) 864-8772 | | Evanston, IL 60204-1818 | Support: (847) 864-1910 | | USA | Fax: (847) 864-6221 | | http://www.estima.com | estima@estima.com | ------------------------------------------------------------ ---------- End of message ---------- From: Richard Jankowski To: "RATS Discussion List" Subject: Univariate Forecasting Date: Mon, 09 Oct 2000 13:34:33 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: X-Mailer: Mozilla 4.5 [en] (Win95; I) (via Mercury MTS (Bindery) v1.40) MIME-Version: 1.0 Content-Type: text/plain; charset=us-ascii Content-Transfer-Encoding: 7bit Dear Rats Users, I have encountered a problem in generating univariate forecasts. I have a short time series (N < 36). But, I have a number of different draws from the same distribution. I was wondering if I could generate my forecasts from a cross-section, time-series (panel) analysis of the univariate series? Are there any theoretical problems of generating a univariate forecast from a panel? Second, is there any software that would implement such a forecast? Sincerely, -Dick Jankowski ---------- End of message ---------- From: "Estima" To: "RATS Discussion List" Subject: Re: Univariate Forecasting Date: Mon, 9 Oct 2000 16:15:46 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: Organization: Estima MIME-Version: 1.0 Content-type: text/plain; charset=US-ASCII Content-transfer-encoding: 7BIT X-mailer: Pegasus Mail for Win32 (v3.11) (via Mercury MTS (Bindery) v1.40) > Dear Rats Users, > I have encountered a problem in generating univariate forecasts. I > have a short time series (N < 36). But, I have a number of different > draws from the same distribution. I was wondering if I could generate > my forecasts from a cross-section, time-series (panel) analysis of the > univariate series? Are there any theoretical problems of generating a > univariate forecast from a panel? Second, is there any software that > would implement such a forecast? You can certainly generate forecasts for panel data in RATS. You have to do it one individual at a time, and you have to make sure that you've padded the series to allow room at the "end" of each individual for the forecasts. For example, suppose you have 3 observations per individual. In RATS, the series will be stacked as follows (assuming you're using the panel organization directly supported by RATS via the PANEL option on CALENDAR): indiv//period data 1//1 1.0 1//2 2.0 1//3 3.0 2//1 1.0 2//2 2.0 2//3 3.0 etc. You need to pad the data to have room for the forecasts. You can do this by saving the data to a RATS format file, and then reading it back in with a larger value on the PANEL option. For example, if you do CAL(PANEL=5), you'll get: indiv//period data 1//1 1.0 1//2 2.0 1//3 3.0 1//4 NA 1//5 NA 2//1 1.0 2//2 2.0 2//3 3.0 2//4 NA 2//5 NA etc. Now you can do two-step forecasts. You'll do one for each individual-- using 1//4 as the first start date, 2//4 as the second start date, etc. This can be done in a loop: clear xhat do indiv=1,n forecast 1 2 indiv//4 # myeqn xhat end Sincerely, Tom Maycock Estima -- ------------------------------------------------------------ | Estima | Sales: (800) 822-8038 | | P.O. Box 1818 | (847) 864-8772 | | Evanston, IL 60204-1818 | Support: (847) 864-1910 | | USA | Fax: (847) 864-6221 | | http://www.estima.com | estima@estima.com | ------------------------------------------------------------ ---------- End of message ---------- From: Richard Jankowski To: "RATS Discussion List" Subject: Re: Univariate Forecasting Date: Tue, 10 Oct 2000 14:00:44 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: X-Mailer: Mozilla 4.5 [en] (Win95; I) (via Mercury MTS (Bindery) v1.40) MIME-Version: 1.0 Content-Type: text/plain; charset=us-ascii Content-Transfer-Encoding: 7bit Thank you Tom. But, I was wondering if first you can generate a common ARIMA structure for all the individuals in the panel, and second, use the common ARIMA structure in forecasting. The problem is that individual forecasts, based upon individual ARIMA processes are going to have very wide confidence bounds because of the low number of time observations per individual. I am trying to reduce the confidence intervals by estimating a common ARIMA structure from the panel data. Estima wrote: > > Dear Rats Users, > > I have encountered a problem in generating univariate forecasts. I > > have a short time series (N < 36). But, I have a number of different > > draws from the same distribution. I was wondering if I could generate > > my forecasts from a cross-section, time-series (panel) analysis of the > > univariate series? Are there any theoretical problems of generating a > > univariate forecast from a panel? Second, is there any software that > > would implement such a forecast? > > You can certainly generate forecasts for panel data in RATS. You have > to do it one individual at a time, and you have to make sure that > you've padded the series to allow room at the "end" of each > individual for the forecasts. For example, suppose you have 3 > observations per individual. In RATS, the series will be stacked as > follows (assuming you're using the panel organization directly > supported by RATS via the PANEL option on CALENDAR): > > indiv//period data > 1//1 1.0 > 1//2 2.0 > 1//3 3.0 > 2//1 1.0 > 2//2 2.0 > 2//3 3.0 > etc. > > You need to pad the data to have room for the forecasts. You can do > this by saving the data to a RATS format file, and then reading it > back in with a larger value on the PANEL option. For example, if you > do CAL(PANEL=5), you'll get: > > indiv//period data > 1//1 1.0 > 1//2 2.0 > 1//3 3.0 > 1//4 NA > 1//5 NA > 2//1 1.0 > 2//2 2.0 > 2//3 3.0 > 2//4 NA > 2//5 NA > etc. > > Now you can do two-step forecasts. You'll do one for each individual-- > using 1//4 as the first start date, 2//4 as the second start date, > etc. This can be done in a loop: > > clear xhat > do indiv=1,n > forecast 1 2 indiv//4 > # myeqn xhat > end > > Sincerely, > Tom Maycock > Estima > > -- > ------------------------------------------------------------ > | Estima | Sales: (800) 822-8038 | > | P.O. Box 1818 | (847) 864-8772 | > | Evanston, IL 60204-1818 | Support: (847) 864-1910 | > | USA | Fax: (847) 864-6221 | > | http://www.estima.com | estima@estima.com | > ------------------------------------------------------------ ---------- End of message ---------- From: "Estima" To: "RATS Discussion List" Subject: Re: Univariate Forecasting Date: Tue, 10 Oct 2000 13:41:28 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: Organization: Estima MIME-Version: 1.0 Content-type: text/plain; charset=US-ASCII Content-transfer-encoding: 7BIT X-mailer: Pegasus Mail for Win32 (v3.11) (via Mercury MTS (Bindery) v1.40) On 10 Oct 00, at 14:00, Richard Jankowski wrote: > Thank you Tom. But, I was wondering if first you can generate a common ARIMA > structure for all the individuals in the panel, and second, use the common > ARIMA structure in forecasting. The problem is that individual forecasts, > based upon individual ARIMA processes are going to have very wide confidence > bounds because of the low number of time observations per individual. I am > trying to reduce the confidence intervals by estimating a common ARIMA > structure from the panel data. I don't know of any good way to estimate a single ARIMA model using an entire panel set. The problem is that the standard ARIMA techniques don't work with any gaps in the data, so you can skip the first few obserations in each individual. The only option I know of would be to turn off the panel-data CALENDAR setting (just issue CAL with no parameters or options) and then run the ARIMA model on the whole sample. You could get esitmates, but they'd be biased by the fact that lags of the first few observations of each individual would be taken from the last few periods of the preceding individual. If your number of time periods is large as compared to the number of individuals, maybe the effects wouldn't be too severe, but I'd hate to count on that. Maybe someone else on the list is aware of or has done work in this area? Sincerely, Tom Maycock Estima -- ------------------------------------------------------------ | Estima | Sales: (800) 822-8038 | | P.O. Box 1818 | (847) 864-8772 | | Evanston, IL 60204-1818 | Support: (847) 864-1910 | | USA | Fax: (847) 864-6221 | | http://www.estima.com | estima@estima.com | ------------------------------------------------------------ ---------- End of message ---------- From: Richard Jankowski To: "RATS Discussion List" Subject: Re: Univariate Forecasting Date: Tue, 10 Oct 2000 17:54:24 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: X-Mailer: Mozilla 4.5 [en] (Win95; I) (via Mercury MTS (Bindery) v1.40) MIME-Version: 1.0 Content-Type: text/plain; charset=us-ascii Content-Transfer-Encoding: 7bit Please excuse this note if it is a repeat of an earlier version. I received a "undeliverable mail" notice which I cannot decipher, and I do not know if my earlier note was forwarded. Thank you, Tom. What I need to know is whether the forecast is based on a common ARIMA process identified for the entire panel, or if it is a different ARIMA process for each individual in the panel? What I need is a program that will identify a common ARIMA process for the entire panel, and then use that ARIMA process to forecast for each individual in the panel. Estima wrote: > > Dear Rats Users, > > I have encountered a problem in generating univariate forecasts. I > > have a short time series (N < 36). But, I have a number of different > > draws from the same distribution. I was wondering if I could generate > > my forecasts from a cross-section, time-series (panel) analysis of the > > univariate series? Are there any theoretical problems of generating a > > univariate forecast from a panel? Second, is there any software that > > would implement such a forecast? > > You can certainly generate forecasts for panel data in RATS. You have > to do it one individual at a time, and you have to make sure that > you've padded the series to allow room at the "end" of each > individual for the forecasts. For example, suppose you have 3 > observations per individual. In RATS, the series will be stacked as > follows (assuming you're using the panel organization directly > supported by RATS via the PANEL option on CALENDAR): > > indiv//period data > 1//1 1.0 > 1//2 2.0 > 1//3 3.0 > 2//1 1.0 > 2//2 2.0 > 2//3 3.0 > etc. > > You need to pad the data to have room for the forecasts. You can do > this by saving the data to a RATS format file, and then reading it > back in with a larger value on the PANEL option. For example, if you > do CAL(PANEL=5), you'll get: > > indiv//period data > 1//1 1.0 > 1//2 2.0 > 1//3 3.0 > 1//4 NA > 1//5 NA > 2//1 1.0 > 2//2 2.0 > 2//3 3.0 > 2//4 NA > 2//5 NA > etc. > > Now you can do two-step forecasts. You'll do one for each individual-- > using 1//4 as the first start date, 2//4 as the second start date, > etc. This can be done in a loop: > > clear xhat > do indiv=1,n > forecast 1 2 indiv//4 > # myeqn xhat > end > > Sincerely, > Tom Maycock > Estima > > -- > ------------------------------------------------------------ > | Estima | Sales: (800) 822-8038 | > | P.O. Box 1818 | (847) 864-8772 | > | Evanston, IL 60204-1818 | Support: (847) 864-1910 | > | USA | Fax: (847) 864-6221 | > | http://www.estima.com | estima@estima.com | > ------------------------------------------------------------ ---------- End of message ---------- From: pierpaolo grippa To: "RATS Discussion List" Subject: (no subject) Date: Mon, 16 Oct 2000 02:34:24 +0200 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: X-Mailer: Mozilla 4.5 [en] (Win95; I) (via Mercury MTS (Bindery) v1.40) MIME-Version: 1.0 Content-Type: text/plain; charset=us-ascii Content-Transfer-Encoding: 7bit Dear RATS users, I can observe on n units (inexed by "i") a weighted average r(i) of three (unknown) variables a(i), b(i), c(i) (all the three constrained in the [0,1] range): r(i) = a(i)*x(i) + b(i)*y(i) + c(i)*z(i) I can also observe the weights x(i), y(i), z(i), which are constrained to be x + y + z = 1. On some of the "n" units any of the three weights might be 1 (with the remaining two being zero, of course); but, in general, I can expect to have 3*n unknowns (certainly more than n). I am interested in estimating the means (and possibly even some higher moments) of the three variables a, b, c, by exploiting the relationship between the weighted average and the weights. What would you suggest to be an adequate statistical procedure for this problem ? Thanks. Pierpaolo Grippa ---------- End of message ---------- From: Binelli Maurizio To: "RATS Discussion List" Subject: Trouble with DISPLAY @(>250) Date: Wed, 18 Oct 2000 09:58:48 +0200 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: MIME-Version: 1.0 X-Mailer: Internet Mail Service (5.5.2650.21) (via Mercury MTS (Bindery) v1.40) Content-Type: text/plain Dear RATS users, I need to export arrays for which I need to print rows larger than 300 spaces. I tried to open an output txt file and display it but I couldn't print anything beyond 250 coumn (ex. display @255 'something'), this even in the output screen windows. Could someone kindly give me some insight? Many many thanks. Maurizio ---------- End of message ---------- From: "Estima" To: "RATS Discussion List" Subject: Re: Trouble with DISPLAY @(>250) Date: Wed, 18 Oct 2000 15:45:59 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: Organization: Estima MIME-Version: 1.0 Content-type: text/plain; charset=US-ASCII Content-transfer-encoding: 7BIT X-mailer: Pegasus Mail for Win32 (v3.11) (via Mercury MTS (Bindery) v1.40) > I need to export arrays for which I need to print rows larger than > 300 spaces. I tried to open an output txt file and display it but I couldn't > print anything beyond 250 coumn (ex. display @255 'something'), this even in > the output screen windows. Could someone kindly give me some insight? The editor won't display more than 256 (or 255, don't recall off hand) characters on a single line, so it will wrap output you send to the screen. I suspect DISPLAY is similarly limited to a max of 256 characters (not coincidentally the max. length of a STRING type variable in RATS). If you're outputting numbers, you may be able to use WRITE(UNIT=COPY) to generate output (if sending it to a file works for your purpose). For example: dec rect big(2,300) ewise big(i,j) = %if(i==1,j,2000+j) open copy big.out write(unit=copy,format='(300f10.1)') big close copy Sincerely, Tom Maycock Estima -- ------------------------------------------------------------ | Estima | Sales: (800) 822-8038 | | P.O. Box 1818 | (847) 864-8772 | | Evanston, IL 60204-1818 | Support: (847) 864-1910 | | USA | Fax: (847) 864-6221 | | http://www.estima.com | estima@estima.com | ------------------------------------------------------------ ---------- End of message ---------- From: Imam Alam To: "RATS Discussion List" Subject: Dummy in CATS Date: Thu, 19 Oct 2000 08:41:20 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: Organization: University of Northern Iowa MIME-version: 1.0 X-Mailer: Mozilla 4.61 [en] (Win95; U) (via Mercury MTS (Bindery) v1.40) Content-type: text/plain; charset=us-ascii Content-transfer-encoding: 7bit Hello everyone: I was wondering if it is possible to include a dummy variable in the cointegration space (not just in the short run dynamics) in CATS in the Johansen procedure. As for example, a dummy for political instability in a growth model where this is an important variable. Thank you in advance. M. Alam ---------- End of message ---------- From: Ferdaus Hossain To: "RATS Discussion List" Subject: RE: Dummy in CATS Date: Thu, 19 Oct 2000 10:08:21 -0400 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: MIME-version: 1.0 X-Mailer: Microsoft Outlook IMO, Build 9.0.2416 (9.0.2911.0) (via Mercury MTS (Bindery) v1.40) Content-type: text/plain; charset="us-ascii" Content-transfer-encoding: 7bit Look through the CATS manual and you will see example of Dummy variables are included. Hope it helps. Ferdaus Hossain Assistant Professor Department of Agricultural, Food & Resource Economics Rutgers University 55 Dudley Road New Brunswick, NJ 08901-8520 Tel: (732) 932-9155 Ext. 217 (Work) (732) 249-5679 (Home) Fax: (732) 932-8887 email: hossain@aesop.rutgers.edu -----Original Message----- From: Maiser@EFS01.efs.mq.edu.au [mailto:Maiser@EFS01.efs.mq.edu.au]On Behalf Of Imam Alam Sent: Thursday, October 19, 2000 9:41 AM To: RATS Discussion List Subject: Dummy in CATS Hello everyone: I was wondering if it is possible to include a dummy variable in the cointegration space (not just in the short run dynamics) in CATS in the Johansen procedure. As for example, a dummy for political instability in a growth model where this is an important variable. Thank you in advance. M. Alam ---------- End of message ---------- From: Woo Kai Yin To: "RATS Discussion List" Subject: Re: Dummy in CATS Date: Fri, 20 Oct 2000 01:05:20 +0800 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: X-Mailer: Mozilla 3.01C-IMS (Win95; I) (via Mercury MTS (Bindery) v1.40) MIME-Version: 1.0 Content-Type: text/plain; charset=us-ascii Content-Transfer-Encoding: 7bit Ferdaus Hossain wrote: > > Look through the CATS manual and you will see example of Dummy variables are > included. > > Hope it helps. > > Ferdaus Hossain > Assistant Professor > Department of Agricultural, Food & Resource Economics > Rutgers University > 55 Dudley Road > New Brunswick, NJ 08901-8520 > > Tel: (732) 932-9155 Ext. 217 (Work) > (732) 249-5679 (Home) > Fax: (732) 932-8887 > email: hossain@aesop.rutgers.edu > > -----Original Message----- > From: Maiser@EFS01.efs.mq.edu.au [mailto:Maiser@EFS01.efs.mq.edu.au]On > Behalf Of Imam Alam > Sent: Thursday, October 19, 2000 9:41 AM > To: RATS Discussion List > Subject: Dummy in CATS > > Hello everyone: > > I was wondering if it is possible to include a dummy variable in the > cointegration space (not just in the short run dynamics) in CATS in the > Johansen procedure. As for example, a dummy for political instability in > a growth model where this is an important variable. > > Thank you in advance. > > M. Alam Dear RATS users, I wonder if we can add dummy variables in the cointegration space. Of course, we add dummy variables, from the manual, "The DUM switch is different from the EXO switch in two ways: the dummy variables are only included in the short-run dynamics and not in the cointegration space and there is no automatic lag structure for the dummy series...". May I ask, "does the CATS not allowed us the add dummies into the cointegration space, or the theory excludes this possibilies?" Thanks for your sincere reply. regards, Kai-yin Woo HOng KOng Shue Yan College. HOng KOng. ---------- End of message ---------- From: Pablo Villaplana To: "RATS Discussion List" Subject: Date: Wed, 25 Oct 2000 11:48:53 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: X-Mailer: EMBLA 1.1 (via Mercury MTS (Bindery) v1.40) MIME-Version: 1.0 Content-Type: TEXT/PLAIN; CHARSET=ISO-8859-1 dear RATS users i would like to know if you can include words in a matrix of data, that is if one of the columns of the matrix you use as the dataset can include words (not just numbers) in order to later on make analysis conditional on this words. in the case i'm interested in, i don't have just two words (for instance male/female) so it's more difficult to change the "alphanumeric" classification into a numeric one (in the case male female creating a dummy variable, 0/1) thanks in advance ---------- End of message ---------- From: Christopher F Baum To: "RATS Discussion List" Subject: Re: Date: Wed, 25 Oct 2000 08:03:32 -0400 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: X-Mailer: Mulberry/2.0.4 (MacOS) (via Mercury MTS (Bindery) v1.40) MIME-Version: 1.0 Content-Type: text/plain; charset=us-ascii; format=flowed Content-Transfer-Encoding: 7bit RATS is surely not the package of choice to work with data that include value labels. I would highly recommend Stata (www.stata.com) as an inexpensive and extremely powerful alternative. RATS and Stata complement each others' strengths. Kit Baum Boston College Economics --On Wednesday, October 25, 2000 11.48 -0500 Pablo Villaplana wrote: > dear RATS users > > i would like to know if you can include words in a matrix of data, > that is if one of the columns of the matrix you use as the dataset > can include words (not just numbers) in order to later on make > analysis conditional on this words. > in the case i'm interested in, i don't have just two words (for > instance male/female) so it's more difficult to change the > "alphanumeric" classification into a numeric one (in the case male > female creating a dummy variable, 0/1) > > > thanks in advance > > ----------------------------------------------------------------- Kit Baum baum@bc.edu http://fmwww.bc.edu/ec-v/baum.fac.html ---------- End of message ---------- From: "Estima" To: "RATS Discussion List" Subject: Re: Date: Wed, 25 Oct 2000 10:08:35 -0500 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: Organization: Estima MIME-Version: 1.0 Content-type: text/plain; charset=US-ASCII Content-transfer-encoding: 7BIT X-mailer: Pegasus Mail for Win32 (v3.11) (via Mercury MTS (Bindery) v1.40) > i would like to know if you can include words in a matrix of data, > that is if one of the columns of the matrix you use as the dataset > can include words (not just numbers) in order to later on make > analysis conditional on this words. > in the case i'm interested in, i don't have just two words (for > instance male/female) so it's more difficult to change the > "alphanumeric" classification into a numeric one (in the case male > female creating a dummy variable, 0/1) You can, sort of. You can't combine text and numbers in a single array, but you could have two separate arrays and do operations on one conditional on the values of the other. For example: declare vector[labels] vl(10) declare vector[real] vr(10) use OPEN DATA and READ(UNIT=DATA, possibly with VARYING option) to fill the arrays if pulling information from a file. Then you can do things like: ewise vr(i) = %if(vl(i)=='male', 1.0 , 0.0) or do i=1,10 if vl(i)=='male'.and.vr(i)==1.0 { do something } else { do something else } end and so on. Certainly, though, there are other programs out there more specifically designed to deal with character-based data. Sincerely, Tom Maycock Estima -- ------------------------------------------------------------ | Estima | Sales: (800) 822-8038 | | P.O. Box 1818 | (847) 864-8772 | | Evanston, IL 60204-1818 | Support: (847) 864-1910 | | USA | Fax: (847) 864-6221 | | http://www.estima.com | estima@estima.com | ------------------------------------------------------------ ---------- End of message ---------- From: BOURDON Marie Benedicte To: "RATS Discussion List" Subject: impulse Date: Thu, 26 Oct 2000 16:43:24 +0200 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: MIME-Version: 1.0 X-Mailer: Internet Mail Service (5.5.2650.21) (via Mercury MTS (Bindery) v1.40) Content-Type: text/plain; Content-Transfer-Encoding: quoted-printable dear RATS users i would like to know if it is possible to impulse with a cast = estimation ?=20 thank to advance=20 bourdon marie-b=E9n=E9dicte ---------- End of message ---------- From: Gilbert Colletaz To: "RATS Discussion List" Subject: Rats 4.3 and Windows 2000 Date: Fri, 27 Oct 2000 14:40:18 +0200 Errors-to: Reply-to: "RATS Discussion List" Sender: Maiser@efs01.efs.mq.edu.au X-listname: Organization: LEO X-Mailer: Messagerie Internet de Microsoft/MAPI - 8.0.0.4211 (via Mercury MTS (Bindery) v1.40) MIME-Version: 1.0 Content-Type: text/plain; charset="us-ascii" Content-Transfer-Encoding: 7bit dear RATS users, I just received a notebook with windows 2000 installed. When I try to source a proc which works fine on my desktop (OS=windows 98), it generates a crash on the notebook. Has someone else encounters the same problem, or more generally, is there a compatibility issue between Rats 4.31 and Windows 2000 ? Thank you in advance gilbert colletaz ---------- End of message ----------