Transdimensional inference in the geosciences
Date
2013
Authors
Sambridge, Malcolm
Tkalčić, Hrvoje
Bodin, T.
Gallagher, K.
Journal Title
Journal ISSN
Volume Title
Publisher
Royal Society of London
Abstract
Seismologists construct images of the Earth's interior structure using observations, derived from seismograms, collected at the surface. A common approach to such inverse problems is to build a single 'best' Earth model, in some sense. This is despite the fact that the observations by themselves often do not require, or even allow, a single bestfit Earth model to exist. Interpretation of optimal models can be fraught with difficulties, particularly when formal uncertainty estimates become heavily dependent on the regularization imposed. Similar issues occur across the physical sciences with model construction in ill-posed problems. An alternative approach is to embrace the non-uniqueness directly and employ an inference process based on parameter space sampling. Instead of seeking a best model within an optimization framework, one seeks an ensemble of solutions and derives properties of that ensemble for inspection.While this idea has itself been employed for more than 30 years, it is now receiving increasing attention in the geosciences. Recently, it has been shown that transdimensional and hierarchical sampling methods have some considerable benefits for problems involving multiple parameter types, uncertain data errors and/or uncertain model parametrizations, as are common in seismology. Rather than being forced to make decisions on parametrization, the level of data noise and the weights between data types in advance, as is often the case in an optimization framework, the choice can be informed by the data themselves. Despite the relatively high computational burden involved, the number of areas where sampling methods are now feasible is growing rapidly. The intention of this article is to introduce concepts of transdimensional inference to a general readership and illustrate with particular seismological examples. A growing body of references provide necessary detail.
Description
Keywords
Keywords: Alternative approach; Bayesian inference; Best model; Computational burden; Data noise; Data type; Earth models; Earth's interior; Geosciences; Growing bodies; Hierarchical sampling; Ill posed problem; Inference process; Inversion; Model construction; Mul Bayesian inference; Inversion; Variable parametrization
Citation
Collections
Source
Philosophical Transactions of the Royal Society Series A
Type
Journal article
Book Title
Entity type
Access Statement
License Rights
Restricted until
2037-12-31