Conference item
Amortized Monte Carlo integration
- Abstract:
- Current approaches to amortizing Bayesian inference focus solely on approximating the posterior distribution. Typically, this approximation is, in turn, used to calculate expectations for one or more target functions{—}a computational pipeline which is inefficient when the target function(s) are known upfront. In this paper, we address this inefficiency by introducing AMCI, a method for amortizing Monte Carlo integration directly. AMCI operates similarly to amortized inference but produces three distinct amortized proposals, each tailored to a different component of the overall expectation calculation. At runtime, samples are produced separately from each amortized proposal, before being combined to an overall estimate of the expectation. We show that while existing approaches are fundamentally limited in the level of accuracy they can achieve, AMCI can theoretically produce arbitrarily small errors for any integrable target function using only a single sample from each proposal at runtime. We further show that it is able to empirically outperform the theoretically optimal selfnormalized importance sampler on a number of example problems. Furthermore, AMCI allows not only for amortizing over datasets but also amortizing over target functions.
- Publication status:
- Published
- Peer review status:
- Peer reviewed
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- Files:
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(Preview, Version of record, pdf, 489.6KB, Terms of use)
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Authors
+ Engineering and Physical Sciences Research Council
More from this funder
- Funding agency for:
- Goliński, A
- Rainforth, T
- Grant:
- EP/P026753/1
- Publisher:
- Proceedings of Machine Learning Research
- Host title:
- Proceedings of Machine Learning Research
- Journal:
- Proceedings of Machine Learning Research More from this journal
- Volume:
- 97
- Pages:
- 2309-2318
- Series:
- Proceedings of Machine Learning Research
- Publication date:
- 2019-06-09
- Acceptance date:
- 2019-04-22
- ISSN:
-
2640-3498
- Pubs id:
-
pubs:1032373
- UUID:
-
uuid:c1f71e0c-42d8-4e50-9c49-715e6ed3a15f
- Local pid:
-
pubs:1032373
- Source identifiers:
-
1032373
- Deposit date:
-
2019-07-16
Terms of use
- Copyright holder:
- Goliński et al
- Copyright date:
- 2019
- Notes:
- © The Authors 2019. Published Open Access under a Creative Commons License. This paper was presented at the 36th International Conference on Machine Learning, (ICML 2019), Long Beach, California, USA, June 2019. The final version and supplementary materials are available online from PMLR at: http://proceedings.mlr.press/v97/golinski19a.html
- Licence:
- CC Attribution (CC BY)
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