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license: apache-2.0 | |
datasets: | |
- cc100 | |
- wikipedia | |
language: | |
- ja | |
widget: | |
- text: 東北大学で[MASK]の研究をしています。 | |
# BERT large Japanese (unidic-lite with whole word masking, CC-100 and jawiki-20230102) | |
This is a [BERT](https://github.com/google-research/bert) model pretrained on texts in the Japanese language. | |
This version of the model processes input texts with word-level tokenization based on the Unidic 2.1.2 dictionary (available in [unidic-lite](https://pypi.org/project/unidic-lite/) package), followed by the WordPiece subword tokenization. | |
Additionally, the model is trained with the whole word masking enabled for the masked language modeling (MLM) objective. | |
The codes for the pretraining are available at [cl-tohoku/bert-japanese](https://github.com/cl-tohoku/bert-japanese/). | |
## Model architecture | |
The model architecture is the same as the original BERT large model; 24 layers, 1024 dimensions of hidden states, and 16 attention heads. | |
## Training Data | |
The model is trained on the Japanese portion of [CC-100 dataset](https://data.statmt.org/cc-100/) and the Japanese version of Wikipedia. | |
For Wikipedia, we generated a text corpus from the [Wikipedia Cirrussearch dump file](https://dumps.wikimedia.org/other/cirrussearch/) as of January 2, 2023. | |
The corpus files generated from CC-100 and Wikipedia are 74.3GB and 4.9GB in size and consist of approximately 392M and 34M sentences, respectively. | |
For the purpose of splitting texts into sentences, we used [fugashi](https://github.com/polm/fugashi) with [mecab-ipadic-NEologd](https://github.com/neologd/mecab-ipadic-neologd) dictionary (v0.0.7). | |
## Tokenization | |
The texts are first tokenized by MeCab with the Unidic 2.1.2 dictionary and then split into subwords by the WordPiece algorithm. | |
The vocabulary size is 32768. | |
We used [fugashi](https://github.com/polm/fugashi) and [unidic-lite](https://github.com/polm/unidic-lite) packages for the tokenization. | |
## Training | |
We trained the model first on the CC-100 corpus for 1M steps and then on the Wikipedia corpus for another 1M steps. | |
For training of the MLM (masked language modeling) objective, we introduced whole word masking in which all of the subword tokens corresponding to a single word (tokenized by MeCab) are masked at once. | |
For training of each model, we used a v3-8 instance of Cloud TPUs provided by [TPU Research Cloud](https://sites.research.google/trc/about/). | |
## Licenses | |
The pretrained models are distributed under the Apache License 2.0. | |
## Acknowledgments | |
This model is trained with Cloud TPUs provided by [TPU Research Cloud](https://sites.research.google/trc/about/) program. |