Monte Carlo sampling of solutions to inverse problems
- 10 July 1995
- journal article
- Published by American Geophysical Union (AGU) in Journal of Geophysical Research
- Vol. 100 (B7) , 12431-12447
- https://doi.org/10.1029/94jb03097
Abstract
Probabilistic formulation of inverse problems leads to the definition of a probability distribution in the model space. This probability distribution combines a priori information with new information obtained by measuring some observable parameters (data). As, in the general case, the theory linking data with model parameters is nonlinear, the a posteriori probability in the model space may not be easy to describe (it may be multimodal, some moments may not be defined, etc.). When analysing an inverse problem, obtaining a maximum likelihood model is usually not sufficient, as we normally also wish to have information on the resolution power of the data. In the general case we may have a large number of model parameters, and an inspection of the marginal probability densities of interest may be impractical, or even useless. But it is possible to pseudorandomly generate a large collection of models according to the posterior probability distribution and to analyse and display the models in such a way that information on the relative likelihoods of model properties is conveyed to the spectator. This can be accomplished by means of an efficient Monte Carlo method, even in cases where no explicit formula for the a priori distribution is available. The most well known importance sampling method, the Metropolis algorithm, can be generalized, and this gives a method that allows analysis of (possibly highly nonlinear) inverse problems with complex a priori information and data with an arbitrary noise distribution.Keywords
This publication has 23 references indexed in Scilit:
- A SIMULATED ANNEALING APPROACH TO SEISMIC MODEL OPTIMIZATION WITH SPARSE PRIOR INFORMATION1Geophysical Prospecting, 1991
- Variability of estimated binding parametersBiophysical Chemistry, 1990
- Probabilistic Solution of Ill-Posed Problems in Computational VisionJournal of the American Statistical Association, 1987
- Automatic estimation of large residual statics correctionsGeophysics, 1986
- Nonlinear inversion, statistical mechanics, and residual statics estimationGeophysics, 1985
- Optimization by Simulated AnnealingScience, 1983
- Generalized nonlinear inverse problems solved using the least squares criterionReviews of Geophysics, 1982
- Understanding Inverse TheoryAnnual Review of Earth and Planetary Sciences, 1977
- The general linear inverse problem: Implication of surface waves and free oscillations for Earth structureReviews of Geophysics, 1972
- The Monte Carlo MethodJournal of the American Statistical Association, 1949