Introduces α-LIS, a provable generalization of likelihood-informed subspaces to α-tempered posteriors with practical extensions for limited noisy data and unavailable gradients.
DIAS: A data-informed active subspace regularization framework for inverse problems
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Likelihood-informed dimension reduction across tempered Bayesian posteriors
Introduces α-LIS, a provable generalization of likelihood-informed subspaces to α-tempered posteriors with practical extensions for limited noisy data and unavailable gradients.