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Hi,
I never had a chance to the read the book mentioned by Sébastien... And I won't buy it. So I do not know if we follow the methodology described by Durbin and Koopman (kalman filters with missing observations were implemented in Dynare in 2010 or even before I do not remember, and there is an old literature about this problem). Adding NaNs in the datafile is not the whole story if you want to mix frequencies. You also need to adapt the model. For instance, if your model is quaterly but you also have yearly observed data, you need to add an equation to relate the yearly data to the quaterly variables (except if the yearly variable is a stock which is not the case in general). More generally you need to write the model in the highest frequency and add measurement equations in order link the variables with different frequencies.
Best, Stéphane.
On 19/02/2014 10:43, Sébastien Villemot wrote:
Hi Tobias,
Le mardi 18 février 2014 à 17:48 +0000, Tobias Cwik a écrit :
I hope this email finds you well. I don’t know if you remember me, I was working for Prof. Wieland in Frankfurt. I heard that the Dynare team is working on mixed frequency filtering and smoothing in Dynare. Do you know if there is anything implemented in Dynare already?
Yes, Dynare can handle missing observations in the dataset. Which means that if you have a quarterly series and a annual series, you can mix them, by putting missing observations for the annual series in Q2, Q3 an d Q4. Dynare will be able to run the filter, using the methodology described in Durbin and Koopman (2012): "Time Series Analysis by State Space Methods", second edition, Ch. 4.10.
I put Stéphane in CC, he is the one who programmed this.
Best,
- -- Dynare Team