模型:
CAMeL-Lab/bert-base-arabic-camelbert-mix-did-nadi
CAMeLBERT-Mix DID NADI Model is a dialect identification (DID) model that was built by fine-tuning the CAMeLBERT-Mix model. For the fine-tuning, we used the NADI Coountry-level dataset, which includes 21 labels. Our fine-tuning procedure and the hyperparameters we used can be found in our paper " The Interplay of Variant, Size, and Task Type in Arabic Pre-trained Language Models ." Our fine-tuning code can be found here .
You can use the CAMeLBERT-Mix DID NADI model as part of the transformers pipeline. This model will also be available in CAMeL Tools soon.
How to useTo use the model with a transformers pipeline:
>>> from transformers import pipeline >>> did = pipeline('text-classification', model='CAMeL-Lab/bert-base-arabic-camelbert-mix-did-nadi') >>> sentences = ['عامل ايه ؟', 'شلونك ؟ شخبارك ؟'] >>> did(sentences) [{'label': 'Egypt', 'score': 0.920274019241333}, {'label': 'Saudi_Arabia', 'score': 0.26750022172927856}]
Note : to download our models, you would need transformers>=3.5.0 . Otherwise, you could download the models manually.
@inproceedings{inoue-etal-2021-interplay, title = "The Interplay of Variant, Size, and Task Type in {A}rabic Pre-trained Language Models", author = "Inoue, Go and Alhafni, Bashar and Baimukan, Nurpeiis and Bouamor, Houda and Habash, Nizar", booktitle = "Proceedings of the Sixth Arabic Natural Language Processing Workshop", month = apr, year = "2021", address = "Kyiv, Ukraine (Online)", publisher = "Association for Computational Linguistics", abstract = "In this paper, we explore the effects of language variants, data sizes, and fine-tuning task types in Arabic pre-trained language models. To do so, we build three pre-trained language models across three variants of Arabic: Modern Standard Arabic (MSA), dialectal Arabic, and classical Arabic, in addition to a fourth language model which is pre-trained on a mix of the three. We also examine the importance of pre-training data size by building additional models that are pre-trained on a scaled-down set of the MSA variant. We compare our different models to each other, as well as to eight publicly available models by fine-tuning them on five NLP tasks spanning 12 datasets. Our results suggest that the variant proximity of pre-training data to fine-tuning data is more important than the pre-training data size. We exploit this insight in defining an optimized system selection model for the studied tasks.", }