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Documentation

In this work, we introduce ORCA, a publicly available benchmark for Arabic language understanding evaluation. ORCA is carefully constructed to cover diverse Arabic varieties and a wide range of challenging Arabic understanding tasks exploiting 60 different datasets across seven NLU task clusters. To measure current progress in Arabic NLU, we use ORCA to offer a comprehensive comparison between 18 multilingual and Arabic language models.

ORCA Task Cluster

We arrange ORCA, into seven NLU task clusters. These are (1) sentence classification, (2) structured prediction (3) semantic textual similarity and paraphrase, (4) text classification, (5) natural language inference, (6) word sense disambiguation, and (7) question answering.

(1) Natural Language Inference (NLI)

Task Variation Metric Reference
ANS Stance MSA Macro F1 (Khouja, 2020)
Baly Stance MSA Macro F1 (Balyet al., 2018)
XLNI MSA Macro F1 (Conneau et al., 2018)

(2) Question Answering (QA)

Task Variation Metric Reference
Question Answering MSA Macro F1 (Abdul-Mageed et al., 2020a)

(3) Semantic Textual Similarity and Paraphrase (STSP)

Task Variation Metric Reference
Emotion Regression MSA Spearman Correlation (Saif et al., 2018)
MQ2Q MSA Macro F1 (Seelawi al., 2019)
STS MSA Macro F1 (Cer et al., 2017)

(4) Sentence Classification (SC)

(5) Structure Predictions (SP)

(6) Topic Classification (TC)

Task Variation Metric Reference
Topic MSA Macro F1 (Abbas et al.,2011), (Chouigui et al.,2017), (Saad, 2010).

(7) Word Sense Disambiguation (WSD)

Task Variation Metric Reference
Word Sense Disambiguation MSA Macro F1 (El-Razzaz, 2021)

How to Use ORCA

Request Access

To obtain access to the ORCA benchmark on Huggingface, follow the following steps:

  • Login on your Haggingface account

  • Request access

Install Requirments

    pip install datasets transformers seqeval

Login with your Huggingface CLI

You can get/manage your access tokens in your settings.

    export HUGGINGFACE_TOKEN="" 
    huggingface-cli login --token $HUGGINGFACE_TOKEN

Fine-tuning a model on ORCA tasks

We provide a Google Colab Notebook that includes instructions for fine-tuning any model on ORCA tasks. colab

Submitting your results on ORCA test

We design a public leaderboard for scoring PLMs on ORCA. Our leaderboard is interactive and offers rich meta-data about the various datasets involved as well as the language models we evaluate.

You can evalute your models using ORCA leaderboard: https://orca.dlnlp.ai


Citation

If you use ORCA for your scientific publication, or if you find the resources in this repository useful, please cite our paper as follows:

@inproceedings{elmadany-etal-2023-orca,
    title = "{ORCA}: A Challenging Benchmark for {A}rabic Language Understanding",
    author = "Elmadany, AbdelRahim  and
      Nagoudi, ElMoatez Billah  and
      Abdul-Mageed, Muhammad",
    booktitle = "Findings of the Association for Computational Linguistics: ACL 2023",
    month = jul,
    year = "2023",
    address = "Toronto, Canada",
    publisher = "Association for Computational Linguistics",
    url = "https://aclanthology.org/2023.findings-acl.609",
    pages = "9559--9586",
}


Acknowledgments

We gratefully acknowledge support from the Natural Sciences and Engineering Research Council of Canada, the Social Sciences and Humanities Research Council of Canada, Canadian Foundation for Innovation, ComputeCanada and UBC ARC-Sockeye. We also thank the Google TensorFlow Research Cloud (TFRC) program for providing us with free TPU access.

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