How to estimate NAIRU in a state space model of the econometrics toolbox
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I would like to estimate the a time-varying nairu from the Philipps Curve: pi_t = pi*_t + beta*(u_t - u*_t) + e_t
pi_t: inflation
pi*_t: trend inflation
u_t: observed unemployment rate
u*_t: unobserved nairu
---------------------------------------------------
state equations are:
pi*_t = pi*_t-1 + v_1t
u*_t = u*_t-1 + v_2t
-------------------------------------------
 N = 184 %# observations
 m = 2 %# state equations  
 A = zeros(m);
    A(1,1) = 1;
    A(2,2) = NaN;
% Define the state-disturbance-loading matrix.
B = zeros(m);
  B(1,1) = 0.001;
  B(2,2) = 0.001;
% Define the measurement-sensitivity matrix.
   C = zeros(N,m);
    C(1,1) = 1;
    C(1,2) = 1;
% Define the observation-innovation matrix.
 D = zeros(N);
    D(1,1) = 0.025;
 params0 = -.3;
 StateType = [2;2];
 Mdl = ssm(A,B,C,D,'StateType',StateType);
Beta0   = [-.3];
 [EstMdl1,estParams,EstParamCov,logL,Output] ...
        = estimate(Mdl,yt,params0,'Predictors',Z,'Beta0',Beta0,'Display',{'params','diagnostics','full'})
    filteredX = filter(EstMdl1,yt,'Predictors',Z,'Beta',estParams(end));
Z = observed unemployment series ---------------------------------------------------------------------------------------
Above the code I have created and it does not give me any reasonable results.
Does anyone have any suggestions?
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Risposte (1)
  Hang Qian
      
 il 19 Ago 2016
        It seems that the constructed SSM is not exactly the same as the one described in the equations. Usually C and D is a low-dimension matrix (say, C appears to be a 1-by-2 vector in this case), it is unnecessary to stack N observations in a giant matrix.
To check whether A,B,C,D construct a desired state-space model, consider disp(Mdl) and the model will be displayed on the screen equation by equation.
Also, I would not let the software guess both initial states, which are diffuse. I would incorporate priors on where the two random-walk states should start in that state-space model.
Regards,
- Hang Qian
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