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Scalable Bayes via barycenter in Wasserstein space

Publication ,  Journal Article
Srivastava, S; Li, C; Dunson, DB
Published in: Journal of Machine Learning Research
August 1, 2018

Divide-and-conquer based methods for Bayesian inference provide a general approach for tractable posterior inference when the sample size is large. These methods divide the data into smaller subsets, sample from the posterior distribution of parameters in parallel on all the subsets, and combine posterior samples from all the subsets to approximate the full data posterior distribution. The smaller size of any subset compared to the full data implies that posterior sampling on any subset is computationally more efficient than sampling from the true posterior distribution. Since the combination step takes negligible time relative to sampling, posterior computations can be scaled to massive data by dividing the full data into sufficiently large number of data subsets. One such approach relies on the geometry of posterior distributions estimated across different subsets and combines them through their barycenter in a Wasserstein space of probability measures. We provide theoretical guarantees on the accuracy of approximation that are valid in many applications. We show that the geometric method approximates the full data posterior distribution better than its competitors across diverse simulations and reproduces known results when applied to a movie ratings database.

Duke Scholars

Published In

Journal of Machine Learning Research

EISSN

1533-7928

ISSN

1532-4435

Publication Date

August 1, 2018

Volume

19

Start / End Page

1 / 35

Related Subject Headings

  • Artificial Intelligence & Image Processing
  • 4905 Statistics
  • 4611 Machine learning
  • 17 Psychology and Cognitive Sciences
  • 08 Information and Computing Sciences
 

Citation

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MLA
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Srivastava, S., Li, C., & Dunson, D. B. (2018). Scalable Bayes via barycenter in Wasserstein space. Journal of Machine Learning Research, 19, 1–35.
Srivastava, S., C. Li, and D. B. Dunson. “Scalable Bayes via barycenter in Wasserstein space.” Journal of Machine Learning Research 19 (August 1, 2018): 1–35.
Srivastava S, Li C, Dunson DB. Scalable Bayes via barycenter in Wasserstein space. Journal of Machine Learning Research. 2018 Aug 1;19:1–35.
Srivastava, S., et al. “Scalable Bayes via barycenter in Wasserstein space.” Journal of Machine Learning Research, vol. 19, Aug. 2018, pp. 1–35.
Srivastava S, Li C, Dunson DB. Scalable Bayes via barycenter in Wasserstein space. Journal of Machine Learning Research. 2018 Aug 1;19:1–35.

Published In

Journal of Machine Learning Research

EISSN

1533-7928

ISSN

1532-4435

Publication Date

August 1, 2018

Volume

19

Start / End Page

1 / 35

Related Subject Headings

  • Artificial Intelligence & Image Processing
  • 4905 Statistics
  • 4611 Machine learning
  • 17 Psychology and Cognitive Sciences
  • 08 Information and Computing Sciences