English

Interpretable probabilistic embeddings: bridging the gap between topic models and neural networks

Computation and Language 2017-11-15 v1

Abstract

We consider probabilistic topic models and more recent word embedding techniques from a perspective of learning hidden semantic representations. Inspired by a striking similarity of the two approaches, we merge them and learn probabilistic embeddings with online EM-algorithm on word co-occurrence data. The resulting embeddings perform on par with Skip-Gram Negative Sampling (SGNS) on word similarity tasks and benefit in the interpretability of the components. Next, we learn probabilistic document embeddings that outperform paragraph2vec on a document similarity task and require less memory and time for training. Finally, we employ multimodal Additive Regularization of Topic Models (ARTM) to obtain a high sparsity and learn embeddings for other modalities, such as timestamps and categories. We observe further improvement of word similarity performance and meaningful inter-modality similarities.

Keywords

Cite

@article{arxiv.1711.04154,
  title  = {Interpretable probabilistic embeddings: bridging the gap between topic models and neural networks},
  author = {Anna Potapenko and Artem Popov and Konstantin Vorontsov},
  journal= {arXiv preprint arXiv:1711.04154},
  year   = {2017}
}

Comments

Appeared in AINL-2017

R2 v1 2026-06-22T22:43:00.764Z