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- Newsgroups: sci.econ
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- From: thompson@atlas.socsci.umn.edu (T. Scott Thompson)
- Subject: Re: RBC Modelling
- Message-ID: <thompson.715450251@daphne.socsci.umn.edu>
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- Organization: Economics Department, University of Minnesota
- References: <92242.220031ECOKXP@BYUVM.BITNET> <thompson.715272635@daphne.socsci.umn.edu> <1992Sep1.204130.7078@Princeton.EDU>
- Date: Wed, 2 Sep 1992 16:10:51 GMT
- Lines: 69
-
- jmo@stokes.princeton.edu (Mike Orszag) writes:
-
- >The RBC models use assumptions based on observed macroeconomic
- >data (Cobb-Douglas production function, etc.) and are calibrated
- >with macroeconomic data. It would be very surprising if such
- >models did not match the data very closely.
-
- >There is no indication that the "technological shocks" of RBC models
- >have anything to do with real technological innovation; I think
- >they are connected with various real rigidities which are in any
- >case indistinguishable from technological shocks even at the
- >microeconomic level.
-
- For those of you who haven't seen these models, the basic idea behind "technology shocks" is something like this:
-
- Y = real output per worker
- K = real capital per worker
-
- Assumed production function:
-
- Y = T * f(K)
-
- where T is an unobserved variable (discussed below), and f( ) is some
- function fixed up to a possible unknown parameter. Typically it is
- assumed that
-
- f(K) = alpha * (K ** beta) (Fortran notation here)
-
- where alpha and beta are unknown but fixed coefficients satisfying
- alpha > 0 and 0 < beta < 1. This is the Cobb-Douglass form. It is
- chosen for convenience, not because it is "based on macroeconomic
- data".
-
- Substituing and taking logs we get
-
- log Y = log alpha + beta*log(K) + log T
-
- We may assume without losing any generality that log(T) has zero mean
- (or any other convenient normalization) since it appears linearly with
- log(alpha) and both are unobserved. The parameters alpha and beta are
- fit to data by some means (the "calibration" refered to by Mr. Orszag,
- although other methods, statistical estimation for example, are
- conceivable). log(T) is the "technology shock" of the model.
-
- Interpretation: log T represents the difference between log Y and log
- f(K). If we think of f(K) as representing a "long run" or "average"
- production function, then this difference is essentially the deviation
- (in logs) between actual output and the output predicted by the long
- run production function. This difference may represent temporary
- changes in productivity. Hence the name "technology shock". It may
- also represent many other things, however, including the inability of
- the _assumed_ form for f(K) to capture the actual relationship between
- inputs and outputs. It may also be capturing the errors that are
- introduced by working with aggregate data rather than modelling the
- complex underlying market structures directly.
-
- So Mr. Orszag is quite right when he warns that the "technology
- shocks" in these models are not necessarily related to measured
- changes in real technology or productivity.
-
- Note: The above should be regarded as an interpretation of one
- equation in one kind of real business cycle model currently employed
- in active research. Before you flame it, keep in mind that you are
- only looking at one piece of a model, and context is often important
- for proper interpretation.
- --
- T. Scott Thompson email: thompson@atlas.socsci.umn.edu
- Department of Economics phone: (612) 625-0119
- University of Minnesota fax: (612) 624-0209
-