--- datasets: - tner/bc5cdr - tner/bionlp2004 - tner/btc - tner/conll2003 - tner/fin - tner/mit_movie_trivia - tner/mit_restaurant - tner/multinerd - tner/ontonotes5 - tner/tweebank_ner - tner/tweetner7 - tner/wikineural - tner/wnut2017 language: - en metrics: - accuracy - f1 pipeline_tag: token-classification --- # RoBERTa Span Detection This model is a fine-tuned model of [roberta-large](https://huggingface.co/roberta-large) after being trained on a **mixture of NER datasets**. Basically, this model can detect NER spans (with no differenciation on classes). Labels use the IBO format and are: - 'B-TAG': beginning token of span - 'I-TAG': inside token of span - 'O': token not a span # Usage This model has been trained in an efficient way and thus cannot be load directly from HuggingFace's hub. To use that model, please follow instructions on this [repo](https://github.com/AntoineBlanot/efficient-llm). # Data used for training - tner/bc5cdr - tner/bionlp2004 - tner/btc - tner/conll2003 - tner/fin - tner/mit_movie_trivia - tner/mit_restaurant - tner/multinerd - tner/ontonotes5 - tner/tweebank_ner - tner/tweetner7 - tner/wikineural - tner/wnut2017 # Evaluation results | Data | Accuracy | |:---:|:---------:| | validation | 0.972 |