huBERT base model (cased)

Model description

Cased BERT model for Hungarian, trained on the (filtered, deduplicated) Hungarian subset of the Common Crawl and a snapshot of the Hungarian Wikipedia.

Intended uses & limitations

The model can be used as any other (cased) BERT model. It has been tested on the chunking and named entity recognition tasks and set a new state-of-the-art on the former.

Training

Details of the training data and procedure can be found in the PhD thesis linked below. (With the caveat that it only contains preliminary results based on the Wikipedia subcorpus. Evaluation of the full model will appear in a future paper.)

Eval results

When fine-tuned (via BertForTokenClassification) on chunking and NER, the model outperforms multilingual BERT, achieves state-of-the-art results on both tasks. The exact scores are

NER Minimal NP Maximal NP
97.62% 97.14% 96.97%

BibTeX entry and citation info

If you use the model, please cite the following papers:

Nemeskey, Dávid Márk (2020). "Natural Language Processing Methods for Language Modeling." PhD Thesis. Eötvös Loránd University.

Bibtex:

@PhDThesis{ Nemeskey:2020,
  author = {Nemeskey, Dávid Márk},
  title  = {Natural Language Processing Methods for Language Modeling},
  year   = {2020},
  school = {E\"otv\"os Lor\'and University}
}

Nemeskey, Dávid Márk (2021). "Introducing huBERT." In: XVII. Magyar Számítógépes Nyelvészeti Konferencia (MSZNY 2021). Szeged, pp. 3-14

Bibtex:

@InProceedings{ Nemeskey:2021a,
  author = {Nemeskey, Dávid Márk},
  title = {Introducing \texttt{huBERT}},
  booktitle = {{XVII}.\ Magyar Sz{\'a}m{\'i}t{\'o}g{\'e}pes Nyelv{\'e}szeti Konferencia ({MSZNY}2021)},
  year = 2021,
  pages = {TBA},
  address = {Szeged},
}
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