Dear all,
I have a few questions on parameter identification. I appreciate it very much if anyone could provide me some hints or suggestions!
1. In the attached file "identification.rar", I include a mod file for identification analysis on my model. If I run the code, and for the analysis on the prior mean, it says two parameters are PAIRWISE collinear (with tol = 1.e-10) ! So the ranks of H (model) and J (moments) are deficient. However, when I do Monte Carlo testing, the identification problem disappears and all the parameters are identified. I am wondering what is going on. Should I worry about the identification problem or just ignore it?
2. The second question is for a better understanding of parameter identification. In the attached file "identification2.rar", I include two figures. I have done the identification analysis and all the parameters are identified. However, in figure1.eps that is from mode_check, gamma_Q is completely blue. What does it mean? Does it mean the likelihood is completely flat? If so, does it mean that this parameter is not identified from a MLE perspective? But since prior is informative, this parameter is identified from a Bayesian perspective, right? In the identification package in Dynare, does the lack of identification go from a Bayesian perspective or a MLE perspective? For other parameters like tau, it seems that the blue and green lines overlap. This means that likelihood and posterior kernels are the same. But there is informative prior that is not reflected in the figure. Why does this happen? In the upper panel of identification.eps, gamma_Q has huge red bar pointing to the negative side. I guess there is some kind of link between this figure and the previous figure. My question is how to better understand the figure of identification strength?
Thanks a lot!