Model description

BERTovski is a large pre-trained language model trained on Bulgarian and Macedonian texts. It was trained from scratch using the RoBERTa architecture. It was developed as part of the MaCoCu project. The main developer is Rik van Noord from the University of Groningen.

BERTovski was trained on 74GB of text, which is equal to just over 7 billion tokens. It was trained for 300,000 steps with a batch size of 2,048, which was approximately 30 epochs.

The training and fine-tuning procedures are described in detail on our Github repo. We aim to train this model for even longer, so keep an eye out for newer versions!

How to use

from transformers import AutoTokenizer, AutoModel, TFAutoModel

tokenizer = AutoTokenizer.from_pretrained("RVN/BERTovski")
model = AutoModel.from_pretrained("RVN/BERTovski") # PyTorch
model = TFAutoModel.from_pretrained("RVN/BERTovski") # Tensorflow

Data

For training, we used all Bulgarian and Macedonian data that was present in the MaCoCu, Oscar, mc4 and Wikipedia corpora. In a manual analysis we found that for Oscar and mc4, if the data did not come from the corresponding domain (.bg or .mk), it was often (badly) machine translated. Therefore, we opted to only use data that originally came from a .bg or .mk domain.

After de-duplicating the data, we were left with a total of 54.5 GB of Bulgarian and 9 GB of Macedonian text. Since there was quite a bit more Bulgarian data, we simply doubled the Macedonian data during training. We trained a shared vocabulary of 32,000 pieces on a subset of the data in which the Bulgarian/Macedonian split was 50/50.

Benchmark performance

We tested performance of BERTovski on benchmarks of XPOS, UPOS and NER. For Bulgarian, we used the data from the Universal Dependencies project. For Macedonian, we used the data sets created in the babushka-bench project. We also tested on a Google (Bulgarian) and human (Macedonian) translated version of the COPA data set (for details see our Github repo). We compare performance to the strong multi-lingual models XLMR-base and XLMR-large. For details regarding the fine-tuning procedure you can checkout our Github.

Scores are averages of three runs, except for COPA, for which we use 10 runs. We use the same hyperparameter settings for all models for UPOS/XPOS/NER, for COPA we optimized the learning rate on the dev set.

Bulgarian

UPOS UPOS XPOS XPOS NER NER COPA
Dev Test Dev Test Dev Test Test
XLM-R-base 99.2 99.4 98.0 98.3 93.2 92.9 56.9
XLM-R-large 99.3 99.4 97.4 97.7 93.7 93.5 53.1
BERTovski 98.8 99.1 97.6 97.8 93.5 93.3 51.7

Macedonian

UPOS UPOS XPOS XPOS NER NER COPA
Dev Test Dev Test Dev Test Test
XLM-R-base 98.3 98.6 97.3 97.1 92.8 94.8 55.3
XLM-R-large 98.3 98.7 97.7 97.5 93.3 95.1 52.5
BERTovski 97.8 98.1 96.4 96.0 92.8 94.6 51.8

Acknowledgements

Research supported with Cloud TPUs from Google's TPU Research Cloud (TRC). The authors received funding from the European Union's Connecting Europe Facility 2014- 2020 - CEF Telecom, under Grant Agreement No.INEA/CEF/ICT/A2020/2278341 (MaCoCu).

Citation

If you use this model, please cite the following paper:

@inproceedings{non-etal-2022-macocu,
    title = "{M}a{C}o{C}u: Massive collection and curation of monolingual and bilingual data: focus on under-resourced languages",
    author = "Ba{\~n}{\'o}n, Marta  and
      Espl{\`a}-Gomis, Miquel  and
      Forcada, Mikel L.  and
      Garc{\'\i}a-Romero, Cristian  and
      Kuzman, Taja  and
      Ljube{\v{s}}i{\'c}, Nikola  and
      van Noord, Rik  and
      Sempere, Leopoldo Pla  and
      Ram{\'\i}rez-S{\'a}nchez, Gema  and
      Rupnik, Peter  and
      Suchomel, V{\'\i}t  and
      Toral, Antonio  and
      van der Werff, Tobias  and
      Zaragoza, Jaume",
    booktitle = "Proceedings of the 23rd Annual Conference of the European Association for Machine Translation",
    month = jun,
    year = "2022",
    address = "Ghent, Belgium",
    publisher = "European Association for Machine Translation",
    url = "https://aclanthology.org/2022.eamt-1.41",
    pages = "303--304"
}
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