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Comparing hard and soft prior bounds in geophysical inverse problemsIn linear inversion of a finite-dimensional data vector y to estimate a finite-dimensional prediction vector z, prior information about X sub E is essential if y is to supply useful limits for z. The one exception occurs when all the prediction functionals are linear combinations of the data functionals. Two forms of prior information are compared: a soft bound on X sub E is a probability distribution p sub x on X which describeds the observer's opinion about where X sub E is likely to be in X; a hard bound on X sub E is an inequality Q sub x(X sub E, X sub E) is equal to or less than 1, where Q sub x is a positive definite quadratic form on X. A hard bound Q sub x can be softened to many different probability distributions p sub x, but all these p sub x's carry much new information about X sub E which is absent from Q sub x, and some information which contradicts Q sub x. Both stochastic inversion (SI) and Bayesian inference (BI) estimate z from y and a soft prior bound p sub x. If that probability distribution was obtained by softening a hard prior bound Q sub x, rather than by objective statistical inference independent of y, then p sub x contains so much unsupported new information absent from Q sub x that conclusions about z obtained with SI or BI would seen to be suspect.
Document ID
19880004438
Acquisition Source
Legacy CDMS
Document Type
Contractor Report (CR)
Authors
Backus, George E.
(California Univ., San Diego La Jolla, CA, United States)
Date Acquired
September 5, 2013
Publication Date
December 28, 1987
Subject Category
Geophysics
Report/Patent Number
NAS 1.26:181557
NASA-CR-181557
Accession Number
88N13820
Funding Number(s)
CONTRACT_GRANT: NSF EAR-85-21543
CONTRACT_GRANT: NAG5-818
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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