0 posterior1.jpg Posterior for ''eps_IS''
0 posterior2.jpg Posterior for '' phiX '' zzeta, gammP, thetP, thetY,
0 posterior3.jpg Posterior for ''rhoBU''
by jpfeifer » Tue Nov 29, 2016 10:25 am
This can sometimes happen, but given the rather small differences this is not a reason to worry in your case (the distributions are made using a kernel density estimate and the peak can be somewhat off in that case). Usually when there is a serious problem , the green line is far away and the trace plots show serious drift. None of this is the case here.
by jpfeifer » Tue Nov 29, 2016 8:53 pm
Not exactly. What you see in those two graphs is an example of bimodality, where the MCMC correctly explores both regions. You still might want to use a longer chain to properly sample from both modes. But there is nothing here to suggest that the chain has not yet converged to its ergodic distribution.
Have you looked at a trace_plot of the posterior density?
trace_plot(options_,M_,estim_params_,'PosteriorDensity',1)
hp_filter
by jpfeifer » Wed Nov 30, 2016 10:36 am
No, you included the trace_plot for the parameters, but not the one for the posterior density itself, i.e. the result from
Code: Select all
trace_plot(options_,M_,estim_params_,'PosteriorDensity',1)
trace_plot(options_,M_,estim_params_,'PosteriorDensity',1);
trace_plot(options_,M_,estim_params_,'PosteriorDensity',2);
Estimation::mcmc: Posterior (dsge) IRFs...
Estimation::mcmc: Posterior IRFs, done!
Not enough input arguments.
Error in trace_plot (line 39)
column = name2index(options_, M_, estim_params_, type, name1);
Error in BggGKlinear (line 1250)
trace_plot(options_,M_,estim_params_,'PosteriorDensity',1);
Error in dynare (line 180)
evalin('base',fname) ;
trace_plot(options_,M_,estim_params_,'PosteriorDensity',1);
trace_plot(options_,M_,estim_params_,'StructuralShock',2,'epsA');
...
all shocks and parameters
...
trace_plot(options_,M_,estim_params_,'PosteriorDensity',1);
Re: Model Comparison Bayesian Estimation (again)
Postby jpfeifer » Fri Apr 04, 2014 9:04 am
Basically all your answers are in Koop's 2003 textbook "Bayesian Econometrics" on pages 4-5.
1. For Bayesian model comparison models do not need to be nested and there is a natural degrees of freedom correction. [b][color=#FF0000]Hence, as long as you use the same data having different parameters does not matter at all.
The steady state file internally changed the values of the following estimated parameters:
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