English

Hierarchical Variational Models

Machine Learning 2016-06-01 v2 Machine Learning Computation Methodology

Abstract

Black box variational inference allows researchers to easily prototype and evaluate an array of models. Recent advances allow such algorithms to scale to high dimensions. However, a central question remains: How to specify an expressive variational distribution that maintains efficient computation? To address this, we develop hierarchical variational models (HVMs). HVMs augment a variational approximation with a prior on its parameters, which allows it to capture complex structure for both discrete and continuous latent variables. The algorithm we develop is black box, can be used for any HVM, and has the same computational efficiency as the original approximation. We study HVMs on a variety of deep discrete latent variable models. HVMs generalize other expressive variational distributions and maintains higher fidelity to the posterior.

Keywords

Cite

@article{arxiv.1511.02386,
  title  = {Hierarchical Variational Models},
  author = {Rajesh Ranganath and Dustin Tran and David M. Blei},
  journal= {arXiv preprint arXiv:1511.02386},
  year   = {2016}
}

Comments

Appears in International Conference on Machine Learning, 2016

R2 v1 2026-06-22T11:39:45.150Z