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Scalable Control Variates for Monte Carlo Methods Via Stochastic Optimization

Publication ,  Conference
Si, S; Oates, CJ; Duncan, AB; Carin, L; Briol, FX
Published in: Springer Proceedings in Mathematics and Statistics
January 1, 2022

Control variates are a well-established tool to reduce the variance of Monte Carlo estimators. However, for large-scale problems including high-dimensional and large-sample settings, their advantages can be outweighed by a substantial computational cost. This paper considers control variates based on Stein operators, presenting a framework that encompasses and generalizes existing approaches that use polynomials, kernels and neural networks. A learning strategy based on minimizing a variational objective through stochastic optimization is proposed, leading to scalable and effective control variates. Novel theoretical results are presented to provide insight into the variance reduction that can be achieved, and an empirical assessment, including applications to Bayesian inference, is provided in support.

Duke Scholars

Published In

Springer Proceedings in Mathematics and Statistics

DOI

EISSN

2194-1017

ISSN

2194-1009

Publication Date

January 1, 2022

Volume

387

Start / End Page

205 / 221
 

Citation

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Si, S., Oates, C. J., Duncan, A. B., Carin, L., & Briol, F. X. (2022). Scalable Control Variates for Monte Carlo Methods Via Stochastic Optimization. In Springer Proceedings in Mathematics and Statistics (Vol. 387, pp. 205–221). https://doi.org/10.1007/978-3-030-98319-2_10
Si, S., C. J. Oates, A. B. Duncan, L. Carin, and F. X. Briol. “Scalable Control Variates for Monte Carlo Methods Via Stochastic Optimization.” In Springer Proceedings in Mathematics and Statistics, 387:205–21, 2022. https://doi.org/10.1007/978-3-030-98319-2_10.
Si S, Oates CJ, Duncan AB, Carin L, Briol FX. Scalable Control Variates for Monte Carlo Methods Via Stochastic Optimization. In: Springer Proceedings in Mathematics and Statistics. 2022. p. 205–21.
Si, S., et al. “Scalable Control Variates for Monte Carlo Methods Via Stochastic Optimization.” Springer Proceedings in Mathematics and Statistics, vol. 387, 2022, pp. 205–21. Scopus, doi:10.1007/978-3-030-98319-2_10.
Si S, Oates CJ, Duncan AB, Carin L, Briol FX. Scalable Control Variates for Monte Carlo Methods Via Stochastic Optimization. Springer Proceedings in Mathematics and Statistics. 2022. p. 205–221.

Published In

Springer Proceedings in Mathematics and Statistics

DOI

EISSN

2194-1017

ISSN

2194-1009

Publication Date

January 1, 2022

Volume

387

Start / End Page

205 / 221