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Abstract
We propose a deep importance sampling method that is suitable for estimating rare event probabilities in high-dimensional problems. We approximate the optimal importance distribution in a general importance sampling problem as the pushforward of a reference distribution under a composition of order-preserving transformations, in which each transformation is formed by a squared tensor-train decomposition. The squared tensor-train decomposition provides a scalable ansatz for building order-preserving high-dimensional transformations via density approximations. The use of a composition of maps moving along a sequence of bridging densities alleviates the difficulty of directly approximating concentrated density functions. To compute expectations over unnormalized probability distributions, we design a ratio estimator that estimates the normalizing constant using a separate importance distribution, again constructed via a composition of transformations in tensor-train format. This offers better theoretical variance reduction compared to self-normalized importance sampling and thus opens the door to efficient computation of rare event probabilities in Bayesian inference problems. Numerical experiments on problems constrained by differential equations show little to no increase in the computational complexity of the estimator when the event probability goes to zero, enabling us to compute hitherto unattainable estimates of rare event probabilities for complex, high-dimensional posterior densities.
Original language | English |
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Pages (from-to) | C1-C29 |
Journal | SIAM Journal on Scientific Computing |
Volume | 46 |
Issue number | 1 |
Early online date | 24 Jan 2024 |
DOIs | |
Publication status | Published - 29 Feb 2024 |
Funding
The first author was supported by Australian Research Council grant DP210103092. The second author was supported by Engineering and Physical Sciences Research Council New Investigator Award EP/T031255/1. The third author was supported by the Deutsche Forschungsgemein-schaft under Germany's Excellence Strategy EXC 2181/1 - 390900948 (STRUCTURES Excellence Cluster). The first and third authors were also supported by the Erwin Schro\"dinger Institute.
Funders | Funder number |
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Engineering and Physical Sciences Research Council | EP/T031255/1 |
Australian Research Council | DP210103092 |
Deutsche Forschungsgemeinschaft | EXC 2181/1 - 390900948 |
Keywords
- Bayesian inference
- inverse problems
- rare events
- tensor train
- transport maps
ASJC Scopus subject areas
- Computational Mathematics
- Applied Mathematics
Fingerprint
Dive into the research topics of 'DEEP IMPORTANCE SAMPLING USING TENSOR TRAINS WITH APPLICATION TO A PRIORI AND A POSTERIORI RARE EVENTS'. Together they form a unique fingerprint.Projects
- 2 Finished
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Tensor decomposition sampling algorithms for Bayesian inverse problems
Dolgov, S. (PI)
Engineering and Physical Sciences Research Council
1/03/21 → 28/02/25
Project: Research council
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Tensor product numerical methods for high-dimensional problems in probability and quantum calculations
Dolgov, S. (PI)
1/01/16 → 31/12/18
Project: Research council