English

Patterns of Scalable Bayesian Inference

Machine Learning 2016-03-23 v2

Abstract

Datasets are growing not just in size but in complexity, creating a demand for rich models and quantification of uncertainty. Bayesian methods are an excellent fit for this demand, but scaling Bayesian inference is a challenge. In response to this challenge, there has been considerable recent work based on varying assumptions about model structure, underlying computational resources, and the importance of asymptotic correctness. As a result, there is a zoo of ideas with few clear overarching principles. In this paper, we seek to identify unifying principles, patterns, and intuitions for scaling Bayesian inference. We review existing work on utilizing modern computing resources with both MCMC and variational approximation techniques. From this taxonomy of ideas, we characterize the general principles that have proven successful for designing scalable inference procedures and comment on the path forward.

Keywords

Cite

@article{arxiv.1602.05221,
  title  = {Patterns of Scalable Bayesian Inference},
  author = {Elaine Angelino and Matthew James Johnson and Ryan P. Adams},
  journal= {arXiv preprint arXiv:1602.05221},
  year   = {2016}
}
R2 v1 2026-06-22T12:51:46.590Z