--- language: it --- # UmBERTo Wikipedia Uncased [UmBERTo](https://github.com/musixmatchresearch/umberto) is a Roberta-based Language Model trained on large Italian Corpora and uses two innovative approaches: SentencePiece and Whole Word Masking. Now available at [github.com/huggingface/transformers](https://huggingface.co/Musixmatch/umberto-commoncrawl-cased-v1)


Marco Lodola, Monument to Umberto Eco, Alessandria 2019

## Dataset UmBERTo-Wikipedia-Uncased Training is trained on a relative small corpus (~7GB) extracted from [Wikipedia-ITA](https://linguatools.org/tools/corpora/wikipedia-monolingual-corpora/). ## Pre-trained model | Model | WWM | Cased | Tokenizer | Vocab Size | Train Steps | Download | | ------ | ------ | ------ | ------ | ------ |------ | ------ | | `umberto-wikipedia-uncased-v1` | YES | YES | SPM | 32K | 100k | [Link](http://bit.ly/35wbSj6) | This model was trained with [SentencePiece](https://github.com/google/sentencepiece) and Whole Word Masking. ## Downstream Tasks These results refers to umberto-wikipedia-uncased model. All details are at [Umberto](https://github.com/musixmatchresearch/umberto) Official Page. #### Named Entity Recognition (NER) | Dataset | F1 | Precision | Recall | Accuracy | | ------ | ------ | ------ | ------ | ----- | | **ICAB-EvalITA07** | **86.240** | 85.939 | 86.544 | 98.534 | | **WikiNER-ITA** | **90.483** | 90.328 | 90.638 | 98.661 | #### Part of Speech (POS) | Dataset | F1 | Precision | Recall | Accuracy | | ------ | ------ | ------ | ------ | ------ | | **UD_Italian-ISDT** | 98.563 | 98.508 | 98.618 | **98.717** | | **UD_Italian-ParTUT** | 97.810 | 97.835 | 97.784 | **98.060** | ## Usage ##### Load UmBERTo Wikipedia Uncased with AutoModel, Autotokenizer: ```python import torch from transformers import AutoTokenizer, AutoModel tokenizer = AutoTokenizer.from_pretrained("Musixmatch/umberto-wikipedia-uncased-v1") umberto = AutoModel.from_pretrained("Musixmatch/umberto-wikipedia-uncased-v1") encoded_input = tokenizer.encode("Umberto Eco è stato un grande scrittore") input_ids = torch.tensor(encoded_input).unsqueeze(0) # Batch size 1 outputs = umberto(input_ids) last_hidden_states = outputs[0] # The last hidden-state is the first element of the output ``` ##### Predict masked token: ```python from transformers import pipeline fill_mask = pipeline( "fill-mask", model="Musixmatch/umberto-wikipedia-uncased-v1", tokenizer="Musixmatch/umberto-wikipedia-uncased-v1" ) result = fill_mask("Umberto Eco è un grande scrittore") # {'sequence': ' umberto eco è stato un grande scrittore', 'score': 0.5784581303596497, 'token': 361} # {'sequence': ' umberto eco è anche un grande scrittore', 'score': 0.33813193440437317, 'token': 269} # {'sequence': ' umberto eco è considerato un grande scrittore', 'score': 0.027196012437343597, 'token': 3236} # {'sequence': ' umberto eco è diventato un grande scrittore', 'score': 0.013716378249228, 'token': 5742} # {'sequence': ' umberto eco è inoltre un grande scrittore', 'score': 0.010662357322871685, 'token': 1030} ``` ## Citation All of the original datasets are publicly available or were released with the owners' grant. The datasets are all released under a CC0 or CCBY license. * UD Italian-ISDT Dataset [Github](https://github.com/UniversalDependencies/UD_Italian-ISDT) * UD Italian-ParTUT Dataset [Github](https://github.com/UniversalDependencies/UD_Italian-ParTUT) * I-CAB (Italian Content Annotation Bank), EvalITA [Page](http://www.evalita.it/) * WIKINER [Page](https://figshare.com/articles/Learning_multilingual_named_entity_recognition_from_Wikipedia/5462500) , [Paper](https://www.sciencedirect.com/science/article/pii/S0004370212000276?via%3Dihub) ``` @inproceedings {magnini2006annotazione, title = {Annotazione di contenuti concettuali in un corpus italiano: I - CAB}, author = {Magnini,Bernardo and Cappelli,Amedeo and Pianta,Emanuele and Speranza,Manuela and Bartalesi Lenzi,V and Sprugnoli,Rachele and Romano,Lorenza and Girardi,Christian and Negri,Matteo}, booktitle = {Proc.of SILFI 2006}, year = {2006} } @inproceedings {magnini2006cab, title = {I - CAB: the Italian Content Annotation Bank.}, author = {Magnini,Bernardo and Pianta,Emanuele and Girardi,Christian and Negri,Matteo and Romano,Lorenza and Speranza,Manuela and Lenzi,Valentina Bartalesi and Sprugnoli,Rachele}, booktitle = {LREC}, pages = {963--968}, year = {2006}, organization = {Citeseer} } ``` ## Authors **Loreto Parisi**: `loreto at musixmatch dot com`, [loretoparisi](https://github.com/loretoparisi) **Simone Francia**: `simone.francia at musixmatch dot com`, [simonefrancia](https://github.com/simonefrancia) **Paolo Magnani**: `paul.magnani95 at gmail dot com`, [paulthemagno](https://github.com/paulthemagno) ## About Musixmatch AI ![Musxmatch Ai mac app icon-128](https://user-images.githubusercontent.com/163333/72244273-396aa380-35ee-11ea-894b-4ea48230c02b.png) We do Machine Learning and Artificial Intelligence @[musixmatch](https://twitter.com/Musixmatch) Follow us on [Twitter](https://twitter.com/musixmatchai) [Github](https://github.com/musixmatchresearch)