Estimation : detrend actual data or log difference

This forum is closed. You can read the posts but cannot write. We have migrated the forum to a new location where you will have to reset your password.
Forum rules
This forum is closed. You can read the posts but cannot write. We have migrated the forum to a new location (https://forum.dynare.org) where you will have to reset your password.

Estimation : detrend actual data or log difference

Postby ajk77 » Wed Jun 09, 2010 8:20 pm

Hello? I had a question below,

As for estimation, to my knowledge, we have to detrend variables by HP filter (for example).
so, detrended real data log(y) which is deviation from the trend could be consistent with y-hat (deviation from the steady-state) in DSGE models.

But in some literatures, typically, Adolfson et al. (2005, 2007), she used growth rate such as log(yt/yt-1), then estimate and forecast them (growth rate
of gdp, consumption, wage, etc) Is it coherent with interpretation of y^ in a DSGE ? does it matter?

Plz. explain these stuff. I'd greatly appreciate it.
ajk77
 
Posts: 5
Joined: Wed Mar 03, 2010 9:36 pm

Re: Estimation : detrend actual data or log difference

Postby jpfeifer » Wed Jun 23, 2010 8:13 am

Hi,
both ways of proceeding are possible. Your model and the data are not stationary due to some trend. There are several ways to eliminate this trend. Usually people use some kind of filter like the HP-filter or the first-difference filter (or some band-pass-filter). If your data has a unit root (we usually think of technology as a unit root process), using first differences is usually seen as more appropriate, because the HP-filter does not explicitely deal with the unit root (although it has been shown to filter out most of it). This is the reason today most models like the one you cited or Smets/Wouters explicitely model the stochastic trend and use an observation equation.
In the end it is often a matter of convenience that depends on how you wrote down your model and with which way it is easier to match the model to the data.

Regarding your last question: Of course the way of filtering your data/eliminating the trend matters for the results. Ideally it should not, but the different filters filter out different components they identify as a trend. Note also that all filters usually introduce an artifact at the beginning/end of the data and this problem is usually more pronounce with an HP-filter.
------------
Johannes Pfeifer
University of Cologne
https://sites.google.com/site/pfeiferecon/
jpfeifer
 
Posts: 6940
Joined: Sun Feb 21, 2010 4:02 pm
Location: Cologne, Germany


Return to Dynare help

Who is online

Users browsing this forum: No registered users and 9 guests