curvature of posterior
Posted: Tue Feb 27, 2007 2:57 pm
I am using the matlab optimizer fmincon to optimize the posterior distribution in DYNARE.
But the optimizer seems to be getting stuck and lost, when it is searching for the mode. This of course is because the posterior is not well behaved.
I understand that the prior can be used to induce proper curvature in the posterior.
Including the shocks, I have around 45 parameters in my model. Is it by plain trial and error that the priors are set to induce the right curvature in the posterior? I also suppose the set of priors that will give us a particular curvature of the posterior is not unique.
For some parameters in these DSGE models, there appear to be no prior information, say like the std errors of the shocks.
Is the ‘proper’ computation of the posterior mode necessary? Given that we are using the random walk MH algorithm, will not any point that the optimizer yields, be sufficient to get the full simulated distribution of the parameters?
cheers
reuben
But the optimizer seems to be getting stuck and lost, when it is searching for the mode. This of course is because the posterior is not well behaved.
I understand that the prior can be used to induce proper curvature in the posterior.
Including the shocks, I have around 45 parameters in my model. Is it by plain trial and error that the priors are set to induce the right curvature in the posterior? I also suppose the set of priors that will give us a particular curvature of the posterior is not unique.
For some parameters in these DSGE models, there appear to be no prior information, say like the std errors of the shocks.
Is the ‘proper’ computation of the posterior mode necessary? Given that we are using the random walk MH algorithm, will not any point that the optimizer yields, be sufficient to get the full simulated distribution of the parameters?
cheers
reuben