by kgarb » Mon May 09, 2016 3:53 pm
Thank you for your response Johannes. I am not trying to estimate a regime-switching model, the model was built before the oil price crash (it is based on Medina and Soto 2007, which was built for Chile) and is not designed to attempt to estimate regime-switching effects. I will try to be more precise in framing my thoughts and questions but it is not a subject I am particularly comfortable with yet so I apologize if I am still not clear in what I'm asking.
What I'm interested in is what kind of effect a structural break will have on what is, as you pointed out, essentially a BGP model. The model is log-linearized around a steady-state of zero for each variable, and all of the observed variables are similarly detrended to be log-deviations around the mean zero steady-state.
From my understanding of how these models function, there is an assumption of a single, constant steady-state for the duration of the data. A deterministic, linearized model can model transitions between steady-states, but a log-linearized model cannot (even if it is deterministic). So then, what effect does incorporating a data series that has a clear structural break have on the estimation results, even if it's detrended?
I believe I am using a first-order approximation, so from the post you linked it would seem like certainty equivalence saves me from the problem of exceptionally large shocks. The question then becomes "is this a unit root process?" In the source data it is, but detrending the data should remove the unit root process, I believe. Based on this, the data series shouldn't introduce any inherent approximation error within the scope of the log-linearized model. On the other hand, it seems to me like the information loss from detrending away from the unit root process will necessarily change the information space the model has available for estimation, creating a divergence between the data generating process the model sees and the true data generating process. This thereby produces results that aren't necessarily comparable with the real world without further corrections - i.e. this is not problematic in time series econometrics because structural breaks are easy to explicitly correct for, but it does not seem to be something DSGEs are equipped to handle.
Under these conditions, how valid are my results likely to be? Am I likely to get more stable or objectively "better" results by not incorporating observed data series with structural breaks that the model cannot appropriately account for?