English

Multi-environment Topic Models

Computation and Language 2024-11-04 v2

Abstract

Probabilistic topic models are a powerful tool for extracting latent themes from large text datasets. In many text datasets, we also observe per-document covariates (e.g., source, style, political affiliation) that act as environments that modulate a "global" (environment-agnostic) topic representation. Accurately learning these representations is important for prediction on new documents in unseen environments and for estimating the causal effect of topics on real-world outcomes. To this end, we introduce the Multi-environment Topic Model (MTM), an unsupervised probabilistic model that separates global and environment-specific terms. Through experimentation on various political content, from ads to tweets and speeches, we show that the MTM produces interpretable global topics with distinct environment-specific words. On multi-environment data, the MTM outperforms strong baselines in and out-of-distribution. It also enables the discovery of accurate causal effects.

Keywords

Cite

@article{arxiv.2410.24126,
  title  = {Multi-environment Topic Models},
  author = {Dominic Sobhani and Amir Feder and David Blei},
  journal= {arXiv preprint arXiv:2410.24126},
  year   = {2024}
}