Title of article :
Measuring prior sensitivity and prior informativeness in large Bayesian models
Author/Authors :
Ulrich K. Müller، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
In large Bayesian models, such as modern DSGE models, it is difficult to assess how much the prior affects the results. This paper derives measures of prior sensitivity and prior informativeness that account for the high dimensional interaction between prior and likelihood information. The basis for both measures is the derivative matrix of the posterior mean with respect to the prior mean, which is easily obtained from Markov Chain Monte Carlo output. We illustrate the approach by examining posterior results in the small model of and the large model of .
Journal title :
Journal monetary economics
Journal title :
Journal monetary economics