Title of article
Sensitivity estimations for Bayesian inference models solved by MCMC methods
Author/Authors
Pérez، نويسنده , , C.J. and Martيn، نويسنده , , J. and Rufo، نويسنده , , M.J.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2006
Pages
5
From page
1310
To page
1314
Abstract
The advent of Markov Chain Monte Carlo (MCMC) methods to simulate posterior distributions has virtually revolutionized the practice of Bayesian statistics. Unfortunately, sensitivity analysis in MCMC methods is a difficult task. In this paper, a computationally low-cost method to estimate local parametric sensitivities in Bayesian models is proposed. The sensitivity measure considered here is the gradient vector of a posterior quantity with respect to the parameter. The gradient vector components are estimated by using a result based on the integral/derivative interchange. The MCMC simulations used to estimate the posterior quantity can be re-used to estimate the sensitivity measures and their errors, avoiding the need for further sampling. The proposed method is easy to apply in practice as it is shown with an illustrative example.
Keywords
Bayesian decision theory , Parametric sensitivity , Bayesian inference , MCMC
Journal title
Reliability Engineering and System Safety
Serial Year
2006
Journal title
Reliability Engineering and System Safety
Record number
1569164
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