Stochastic variational inference
Adobe Systems (United States) · Princeton University · +2 more institutions
Abstract
We develop stochastic variational inference, a scalable algorithm for approximating posterior distributions. We develop this technique for a large class of probabilistic models and we demonstrate it with two probabilistic topic models, latent Dirichlet allocation and the hierarchical Dirichlet process topic model. Using stochastic variational inference, we analyze several large collections of documents: 300K articles from Nature, 1.8M articles from The New York Times, and 3.8M articles from Wikipedia. Stochastic inference can easily handle data sets of this size and outperforms traditional variational inference, which can only handle a smaller subset. (We also show that the Bayesian nonparametric topic model…
Citation impact
- FWCI
- 208.01
- Percentile
- 100%
- References
- 97
Authors
4Topics & keywords
- Inference
- Latent Dirichlet allocation
- Computer science
- Hierarchical Dirichlet process
- Probabilistic logic
- Dirichlet process
- Bayesian inference
- Topic model