| | --- |
| | language: fa |
| | license: apache-2.0 |
| | --- |
| | |
| | ## ParsBERT: Transformer-based Model for Persian Language Understanding |
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| | ParsBERT is a monolingual language model based on Google’s BERT architecture with the same configurations as BERT-Base. |
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| | Paper presenting ParsBERT: [arXiv:2005.12515](https://arxiv.org/abs/2005.12515) |
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| | All the models (downstream tasks) are uncased and trained with whole word masking. (coming soon stay tuned) |
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| | ## Persian NER [ARMAN, PEYMA, ARMAN+PEYMA] |
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| | This task aims to extract named entities in the text, such as names and label with appropriate `NER` classes such as locations, organizations, etc. The datasets used for this task contain sentences that are marked with `IOB` format. In this format, tokens that are not part of an entity are tagged as `”O”` the `”B”`tag corresponds to the first word of an object, and the `”I”` tag corresponds to the rest of the terms of the same entity. Both `”B”` and `”I”` tags are followed by a hyphen (or underscore), followed by the entity category. Therefore, the NER task is a multi-class token classification problem that labels the tokens upon being fed a raw text. There are two primary datasets used in Persian NER, `ARMAN`, and `PEYMA`. In ParsBERT, we prepared ner for both datasets as well as a combination of both datasets. |
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| | ### ARMAN |
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| | ARMAN dataset holds 7,682 sentences with 250,015 sentences tagged over six different classes. |
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| | 1. Organization |
| | 2. Location |
| | 3. Facility |
| | 4. Event |
| | 5. Product |
| | 6. Person |
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| | | Label | # | |
| | |:------------:|:-----:| |
| | | Organization | 30108 | |
| | | Location | 12924 | |
| | | Facility | 4458 | |
| | | Event | 7557 | |
| | | Product | 4389 | |
| | | Person | 15645 | |
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| | **Download** |
| | You can download the dataset from [here](https://github.com/HaniehP/PersianNER) |
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| | ## Results |
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| | The following table summarizes the F1 score obtained by ParsBERT as compared to other models and architectures. |
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| | | Dataset | ParsBERT | MorphoBERT | Beheshti-NER | LSTM-CRF | Rule-Based CRF | BiLSTM-CRF | |
| | |---------|----------|------------|--------------|----------|----------------|------------| |
| | | ARMAN | 93.10* | 89.9 | 84.03 | 86.55 | - | 77.45 | |
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| | ## How to use :hugs: |
| | | Notebook | Description | | |
| | |:----------|:-------------|------:| |
| | | [How to use Pipelines](https://github.com/hooshvare/parsbert-ner/blob/master/persian-ner-pipeline.ipynb) | Simple and efficient way to use State-of-the-Art models on downstream tasks through transformers | [](https://colab.research.google.com/github/hooshvare/parsbert-ner/blob/master/persian-ner-pipeline.ipynb) | |
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| | ## Cite |
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| | Please cite the following paper in your publication if you are using [ParsBERT](https://arxiv.org/abs/2005.12515) in your research: |
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|
| | ```markdown |
| | @article{ParsBERT, |
| | title={ParsBERT: Transformer-based Model for Persian Language Understanding}, |
| | author={Mehrdad Farahani, Mohammad Gharachorloo, Marzieh Farahani, Mohammad Manthouri}, |
| | journal={ArXiv}, |
| | year={2020}, |
| | volume={abs/2005.12515} |
| | } |
| | ``` |
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| | ## Acknowledgments |
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| | We hereby, express our gratitude to the [Tensorflow Research Cloud (TFRC) program](https://tensorflow.org/tfrc) for providing us with the necessary computation resources. We also thank [Hooshvare](https://hooshvare.com) Research Group for facilitating dataset gathering and scraping online text resources. |
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| | ## Contributors |
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| | - Mehrdad Farahani: [Linkedin](https://www.linkedin.com/in/m3hrdadfi/), [Twitter](https://twitter.com/m3hrdadfi), [Github](https://github.com/m3hrdadfi) |
| | - Mohammad Gharachorloo: [Linkedin](https://www.linkedin.com/in/mohammad-gharachorloo/), [Twitter](https://twitter.com/MGharachorloo), [Github](https://github.com/baarsaam) |
| | - Marzieh Farahani: [Linkedin](https://www.linkedin.com/in/marziehphi/), [Twitter](https://twitter.com/marziehphi), [Github](https://github.com/marziehphi) |
| | - Mohammad Manthouri: [Linkedin](https://www.linkedin.com/in/mohammad-manthouri-aka-mansouri-07030766/), [Twitter](https://twitter.com/mmanthouri), [Github](https://github.com/mmanthouri) |
| | - Hooshvare Team: [Official Website](https://hooshvare.com/), [Linkedin](https://www.linkedin.com/company/hooshvare), [Twitter](https://twitter.com/hooshvare), [Github](https://github.com/hooshvare), [Instagram](https://www.instagram.com/hooshvare/) |
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| | + And a special thanks to Sara Tabrizi for her fantastic poster design. Follow her on: [Linkedin](https://www.linkedin.com/in/sara-tabrizi-64548b79/), [Behance](https://www.behance.net/saratabrizi), [Instagram](https://www.instagram.com/sara_b_tabrizi/) |
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| | ## Releases |
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| | ### Release v0.1 (May 29, 2019) |
| | This is the first version of our ParsBERT NER! |
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