by cfp » Wed May 26, 2010 7:55 pm
Yes I know the VAR literature. These are quite different circumstances though.
In a VAR you have some unidentified shocks and you are trying to identify them. Here you have a range of already identified shocks (in some loose sense), which just happen to be correlated. To put it another way, in an unidentified VAR you have a shock that tells you nothing about the quantity you're interested in, here though I am precisely interested in the effects of a shock that works through multiple channels simultaneously (to varying degrees). If I really wanted an equation to be affected by multiple shocks, but to know the effects of each shock on the equation independently, then I would just add all of those multiple shocks to the equation (rather than adding one correlated shock).
I don't know what use-cases you have for people adding correlated shocks to DSGE models. I will tell you my particular one, perhaps it is the exception rather than the rule. I have a model with a continuum of industries (approximated at a range of discrete points), and each industry receives a specific shock, though industries close together receive correlated shocks. (Conditions are similar in industries producing similar products.) For concreteness you might think of these shocks across industries as being drawn from a Brownian Bridge for example (though in fact this is not the process I'm working with). There are two things I might be interested in learning. The first is the impact of a shock to one particular industry, without any corresponding shocks to other industries (despite the correlation structure). This would correspond to you taking IRFs at [1 0 0 0 ...], [0 1 0 0 ...] etc. The second is a representative shock to a given industry, which will always be accompanied by shocks to near-by industries due to the correlation structure. This corresponds to the code in my previous message.
Tom