Streaming Bayesian inference: theoretical limits and mini-batch approximate message-passing
Abstract
In statistical learning for real-world large-scale data problems, one must often resort to "streaming" algorithms which operate sequentially on small batches of data. In this work, we present an analysis of the information-theoretic limits of mini-batch inference in the context of generalized linear models and low-rank matrix factorization. In a controlled Bayes-optimal setting, we characterize the optimal performance and phase transitions as a function of mini-batch size. We base part of our results on a detailed analysis of a mini-batch version of the approximate message-passing algorithm (Mini-AMP), which we introduce. Additionally, we show that this theoretical optimality carries over into real-data problems by illustrating that Mini-AMP is competitive with standard streaming algorithms for clustering.
Cite
@article{arxiv.1706.00705,
title = {Streaming Bayesian inference: theoretical limits and mini-batch approximate message-passing},
author = {Andre Manoel and Florent Krzakala and Eric W. Tramel and Lenka Zdeborová},
journal= {arXiv preprint arXiv:1706.00705},
year = {2018}
}
Comments
19 pages, 4 figures