APNACOMP-PHMLDec 1, 2014

Sparse Variational Bayesian Approximations for Nonlinear Inverse Problems: applications in nonlinear elastography

arXiv:1412.0473v432 citations
AI Analysis

This provides an efficient method for medical diagnosis through non-invasive elastography, though it appears incremental as it builds on existing Variational Bayesian approaches.

The paper tackles the problem of nonlinear, high-dimensional model calibration by developing a sparse Variational Bayesian framework that approximates posterior distributions with fewer forward model calls, demonstrating its application in nonlinear elastography for identifying mechanical properties of biological materials.

This paper presents an efficient Bayesian framework for solving nonlinear, high-dimensional model calibration problems. It is based on a Variational Bayesian formulation that aims at approximating the exact posterior by means of solving an optimization problem over an appropriately selected family of distributions. The goal is two-fold. Firstly, to find lower-dimensional representations of the unknown parameter vector that capture as much as possible of the associated posterior density, and secondly to enable the computation of the approximate posterior density with as few forward calls as possible. We discuss how these objectives can be achieved by using a fully Bayesian argumentation and employing the marginal likelihood or evidence as the ultimate model validation metric for any proposed dimensionality reduction. We demonstrate the performance of the proposed methodology for problems in nonlinear elastography where the identification of the mechanical properties of biological materials can inform non-invasive, medical diagnosis. An Importance Sampling scheme is finally employed in order to validate the results and assess the efficacy of the approximations provided.

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