equestion wrote:I am estimating a three variable VAR. Two variables are I(1) and one variable is I(0). Isn't it the case that all variables in the VAR should be included in stationary form to avoid spurious results?
iloverats wrote:If the variables aren't cointegrated, then you can do the VAR either way.
but if the variales are unstationary , can level regresion do the right statistical Inference?
can the impusles response function make sense?
TomDoan wrote:equestion wrote:I am estimating a three variable VAR. Two variables are I(1) and one variable is I(0). Isn't it the case that all variables in the VAR should be included in stationary form to avoid spurious results?
Actually, no. In fact, if the two I(1) variables are cointegrated, the VAR done in differences is misspecified.
The "spurious regression" comes from estimating something like y=bx+u where y and x both have unit roots. If b is, in fact, zero, then u also has to have a unit root, and it's the combination of (uncorrelated) unit roots in both x and u that cause the spurious regression result. When you run a VAR, you should have enough lags that the residuals are close to being serially uncorrelated and at minimum you don't have a residual unit root.
Henrique Andrade wrote:Dear Tom, if I understood correctly, in that case it would be better estimate the VAR without differencing the series, i.e., put all variables in their level regardless of their order of integration. Or it would be better to difference only the two variables that are I(1)?
Best regards,
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