Parametric Mixture Models for Multi-Labeled Text

Abstract

We propose probabilistic generative models, called parametric mix- ture models (PMMs), for multiclass, multi-labeled text categoriza- tion problem. Conventionally, the binary classi(cid:12)cation approach has been employed, in which whether or not text belongs to a cat- egory is judged by the binary classi(cid:12)er for every category. In con- trast, our approach can simultaneously detect multiple categories of text using PMMs. We derive e(cid:14)cient learning and prediction algo- rithms for PMMs. We also empirically show that our method could signi(cid:12)cantly outperform the conventional binary methods when ap- plied to multi-labeled text categorization using real World Wide Web pages.

Cite

Text

Ueda and Saito. "Parametric Mixture Models for Multi-Labeled Text." Neural Information Processing Systems, 2002.

Markdown

[Ueda and Saito. "Parametric Mixture Models for Multi-Labeled Text." Neural Information Processing Systems, 2002.](https://mlanthology.org/neurips/2002/ueda2002neurips-parametric/)

BibTeX

@inproceedings{ueda2002neurips-parametric,
  title     = {{Parametric Mixture Models for Multi-Labeled Text}},
  author    = {Ueda, Naonori and Saito, Kazumi},
  booktitle = {Neural Information Processing Systems},
  year      = {2002},
  pages     = {737-744},
  url       = {https://mlanthology.org/neurips/2002/ueda2002neurips-parametric/}
}