English

Scaling up Dynamic Topic Models

Machine Learning 2016-02-22 v1

Abstract

Dynamic topic models (DTMs) are very effective in discovering topics and capturing their evolution trends in time series data. To do posterior inference of DTMs, existing methods are all batch algorithms that scan the full dataset before each update of the model and make inexact variational approximations with mean-field assumptions. Due to a lack of a more scalable inference algorithm, despite the usefulness, DTMs have not captured large topic dynamics. This paper fills this research void, and presents a fast and parallelizable inference algorithm using Gibbs Sampling with Stochastic Gradient Langevin Dynamics that does not make any unwarranted assumptions. We also present a Metropolis-Hastings based O(1)O(1) sampler for topic assignments for each word token. In a distributed environment, our algorithm requires very little communication between workers during sampling (almost embarrassingly parallel) and scales up to large-scale applications. We are able to learn the largest Dynamic Topic Model to our knowledge, and learned the dynamics of 1,000 topics from 2.6 million documents in less than half an hour, and our empirical results show that our algorithm is not only orders of magnitude faster than the baselines but also achieves lower perplexity.

Keywords

Cite

@article{arxiv.1602.06049,
  title  = {Scaling up Dynamic Topic Models},
  author = {Arnab Bhadury and Jianfei Chen and Jun Zhu and Shixia Liu},
  journal= {arXiv preprint arXiv:1602.06049},
  year   = {2016}
}

Comments

10 pages, 8 figures, to appear in WWW 2016

R2 v1 2026-06-22T12:53:32.806Z