xmlui.dri2xhtml.METS-1.0.item-contributor-funder:
Comunidad de Madrid Ministerio de Ciencia e Innovación (España)
Sponsor:
This work was partially supported by the Office of Naval Research (award no. N00014-19-1-2226), the Spanish Ministry of Science and Innovation (RTI2018-099655-B- I00 CLARA and PID2019-105032GB-I00 SPGRAPH), the Foundation by the Community of Madrid in the framework of the Multiannual Agreement with the Rey Juan Carlos University in line of action 1, Encouragement of Young Ph.D. students investigation Project under Grant F661, and the regional Government of Madrid (Comunidad de Madrid, reference Y2018/TCS-4705 PRACTICO).
Project:
Comunidad de Madrid. Y2018/TCS-4705 Gobierno de España. RTI2018-099655-B-I00 Gobierno de España. PID2019-105032GB-I00
We propose a novel adaptive importance sampling scheme for Bayesian inversion problems where the inference of the variables of interest and the power of the data noise are carried out using distinct (but interacting) methods. More specifically, we consider a BWe propose a novel adaptive importance sampling scheme for Bayesian inversion problems where the inference of the variables of interest and the power of the data noise are carried out using distinct (but interacting) methods. More specifically, we consider a Bayesian analysis for the variables of interest (i.e., the parameters of the model to invert), whereas we employ a maximum likelihood approach for the estimation of the noise power. The whole technique is implemented by means of an iterative procedure with alternating sampling and optimization steps. Moreover, the noise power is also used as a tempered parameter for the posterior distribution of the the variables of interest. Therefore, a sequence of tempered posterior densities is generated, where the tempered parameter is automatically selected according to the current estimate of the noise power. A complete Bayesian study over the model parameters and the scale parameter can also be performed. Numerical experiments show the benefits of the proposed approach.[+][-]