The author would need to explain what an author means by a phrase in a paper. However, theta is the weight on the inflation expectation (compared with the recent observed inflation).bok1234 wrote:Thank you, Mr.Doan. I have not found this new version until this afternoon.
I am still working on it. Let me ask you sever questions about the model (the attached file).
1. I rewrite the equations in the type of reduced form in the attached file. In the reduced form, theta, anchoring coefficient, shows eventually the relationship between 'real inflation (headline CPI inflation)' and 'long-run inflation expectations' . So, can I say that the anchoring coefficient of this paper means how significantly 'long-run inflation expectations' affects 'real inflation', not 'weighted average inflation expectations'? This could sounds very natural or silly but the authors did not define 'anchoring', so I ask you.
Since there are two observables, I'm not sure I would describe it that way.bok1234 wrote: 2. Can I think that your code is for one reduced form equation with time varying coefficients?
u is observable, so u* and u-u* are connected by an identity. You can either include them separately as states and have an identity measurement equation for u, or you can substitute one out in the equation for u. The two are equivalent.bok1234 wrote: 3. State equations includes 4 varibles - kappa, theta, gamma, and u-u*. Unlike others which are estimated in the equations, u-u* is given exogenously - u* is hp filtered u. Is this OK, I mean, don't we have to estimate u* 'in the model'?
Upon reviewing their program, they, in fact, use the full set of 5 states, but because the program they used for Kalman filter/smooth couldn't handle a zero variance on a measurement equation, they put in a small positive number.