--- language: ro license: mit datasets: - oscar - wikipedia --- # Romanian DistilBERT This repository contains the uncased Romanian DistilBERT (named Distil-BERT-base-ro in the paper). The teacher model used for distillation is: [dumitrescustefan/bert-base-romanian-cased-v1](https://huggingface.co/dumitrescustefan/bert-base-romanian-cased-v1). The model was introduced in [this paper](https://arxiv.org/abs/2112.12650). The adjacent code can be found [here](https://github.com/racai-ai/Romanian-DistilBERT). ## Usage ```python from transformers import AutoTokenizer, AutoModel # load the tokenizer and the model tokenizer = AutoTokenizer.from_pretrained("racai/distilbert-base-romanian-cased") model = AutoModel.from_pretrained("racai/distilbert-base-romanian-cased") # tokenize a test sentence input_ids = tokenizer.encode("Aceasta este o propoziție de test.", add_special_tokens=True, return_tensors="pt") # run the tokens trough the model outputs = model(input_ids) print(outputs) ``` ## Model Size It is 35% smaller than its teacher `bert-base-romanian-cased-v1`. | Model | Size (MB) | Params (Millions) | |--------------------------------|:---------:|:----------------:| | bert-base-romanian-cased-v1 | 477 | 124 | | distilbert-base-romanian-cased | 312 | 81 | ## Evaluation We evaluated the model in comparison with its teacher on 5 Romanian tasks: - **UPOS**: Universal Part of Speech (F1-macro) - **XPOS**: Extended Part of Speech (F1-macro) - **NER**: Named Entity Recognition (F1-macro) - **SAPN**: Sentiment Anlaysis - Positive vs Negative (Accuracy) - **SAR**: Sentiment Analysis - Rating (F1-macro) - **DI**: Dialect identification (F1-macro) - **STS**: Semantic Textual Similarity (Pearson) | Model | UPOS | XPOS | NER | SAPN | SAR | DI | STS | |--------------------------------|:----:|:----:|:---:|:----:|:---:|:--:|:---:| | bert-base-romanian-cased-v1 | 98.00 | 96.46 | 85.88 | 98.07 | 79.61 | 95.58 | 80.30 | | distilbert-base-romanian-cased | 97.97 | 97.08 | 83.35 | 98.20 | 80.51 | 96.31 | 80.57 | ### BibTeX entry and citation info ```bibtex @article{avram2021distilling, title={Distilling the Knowledge of Romanian BERTs Using Multiple Teachers}, author={Andrei-Marius Avram and Darius Catrina and Dumitru-Clementin Cercel and Mihai Dascălu and Traian Rebedea and Vasile Păiş and Dan Tufiş}, journal={ArXiv}, year={2021}, volume={abs/2112.12650} } ```