--- license: cc-by-nc-nd-4.0 datasets: - taln-ls2n/Adminset language: - fr library_name: transformers tags: - camembert - BERT - Administrative documents --- # AdminBERT 16GB: A French Language Model adapted to administrative documents [AdminBERT-16GB](example) is a French language model adapted on a large corpus of 50 millions French administrative texts. It is a derivative of CamemBERT model, which is based on the RoBERTa architecture. AdminBERT-16GB is trained using the Whole Word Masking (WWM) objective with 30% mask rate for 3 epochs on 24 A100 GPUs. The dataset used for training is [Adminset](https://huggingface.co/datasets/taln-ls2n/Adminset). ## Evaluation Regarding the fact that at date, there was no evaluation coprus available compose of French administrative, we decide to create our own on the NER (Named Entity Recognition) task. ### Model Performance | Model | P (%) | R (%) | F1 (%) | |------------------------|---------|---------|---------| | Wikineural-NER FT | 77.49 | 75.40 | 75.70 | | NERmemBERT-Large FT | 77.43 | 78.38 | 77.13 | | CamemBERT FT | 77.62 | 79.59 | 77.26 | | NERmemBERT-Base FT | 77.99 | 79.59 | 78.34 | | AdminBERT-NER 4G | 78.47 | 80.35 | 79.26 | | AdminBERT-NER 16GB | 78.79 | 82.07 | 80.11 | To evaluate each model, we performed five runs and averaged the results on the test set of [Adminset-NER](https://huggingface.co/datasets/taln-ls2n/Adminset-NER).