Diebold Li (2006) AR process
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Hi there,
I have a question about the paper by Diebold and Li (2006). They estimated a time-series of three factors subsequently they want to forecast these parameters to forecast the yield curve. I have exactly the same estimated factors, however, when I want to forecast the factors I get different results. They say they model the factor B[t+h] = c + y*B[t] by a simple regression. However, when you perform this regression on simply the previous B, you will only get an estimate of for y and the constant c is always zero right?
Here is the paper
Kind regards,
Michael
Respuestas (1)
the cyclist
el 28 de Jun. de 2014
Why would c be zero? Wouldn't the autoregression of B be something like
B = [1 1 2 3 5 8 13 21 34]';
regressCoeffs = regress(B(2:end)',[ones(8,1) B(1:end-1)']);
c = regressCoeffs(1);
y = regressCoeffs(2);
where I have obviously just put in some nonsense data.
3 comentarios
Michael
el 28 de Jun. de 2014
the cyclist
el 29 de Jun. de 2014
You need to estimate not just the relationship of the last observation to the next-to-last, but rather all observations (except the first one) to the one just prior. So, you are doing the estimate of the coefficients c and y that best fit
B(2) = c + y*B(1)
B(3) = c + y*B(2)
B(4) = c + y*B(3)
etc.
Or maybe I misunderstand.
Michael
el 29 de Jun. de 2014
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