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Econ 427 lecture 19 slides. Vector Autoregressions (cntd). Analyzing dependence in a VAR system. We looked at Granger Causality tests last time. We can also use impulse-response functions to see how a shock to the variables affect each other.
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Econ 427 lecture 19 slides Vector Autoregressions (cntd)
Analyzing dependence in a VAR system • We looked at Granger Causality tests last time. • We can also use impulse-response functions to see how a shock to the variables affect each other. • We want to know how an innovation in one of the variables will affect itself over time and the other variable(s).
Recall the VAR(1) model • A VAR(1) for a system of N=2 variables runs 2 equations where in each case 1 lags of the own and other variables are included. • where
Impulse-Response Functions • We can write the VAR in moving average form: • There are a couple difficulties here. • First, we would like to “normalize” the size of a shock so that we can meaningfully compare size of shocks hitting the two variables • and we would like to be able to shock one variable independently of the other and see how that affect both variables in the system.
Normalizing by the “Cholesky factors” • Define: • Note that by construction epsilon2-star is orthogonal to epsilon 1. • How would you show that?
Normalizing by the “Cholesky factors” • Substituting, this gives y1 and y2 as functions of shocks to epsilon1 and epsilon2*:
The model for Impulse-Response Analysis • We also normalize both innovations so that they have a unit variance (not shown here—see discussion in book). • The normalized model is: • Note that it may make a difference which order you put the variables in. You can check that out empirically.
Forecasting with VARs • Econometric models and interdependence of forecasts