Mahmoud Gzawi
2021
ALUE: Arabic Language Understanding Evaluation
Haitham Seelawi
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Ibraheem Tuffaha
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Mahmoud Gzawi
|
Wael Farhan
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Bashar Talafha
|
Riham Badawi
|
Zyad Sober
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Oday Al-Dweik
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Abed Alhakim Freihat
|
Hussein Al-Natsheh
Proceedings of the Sixth Arabic Natural Language Processing Workshop
The emergence of Multi-task learning (MTL)models in recent years has helped push thestate of the art in Natural Language Un-derstanding (NLU). We strongly believe thatmany NLU problems in Arabic are especiallypoised to reap the benefits of such models. Tothis end we propose the Arabic Language Un-derstanding Evaluation Benchmark (ALUE),based on 8 carefully selected and previouslypublished tasks. For five of these, we providenew privately held evaluation datasets to en-sure the fairness and validity of our benchmark. We also provide a diagnostic dataset to helpresearchers probe the inner workings of theirmodels.Our initial experiments show thatMTL models outperform their singly trainedcounterparts on most tasks. But in order to en-tice participation from the wider community,we stick to publishing singly trained baselinesonly. Nonetheless, our analysis reveals thatthere is plenty of room for improvement inArabic NLU. We hope that ALUE will playa part in helping our community realize someof these improvements. Interested researchersare invited to submit their results to our online,and publicly accessible leaderboard.
2015
TECHLIMED@QALB-Shared Task 2015: a hybrid Arabic Error Correction System
Djamel Mostefa
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Jaber Abualasal
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Omar Asbayou
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Mahmoud Gzawi
|
Ramzi Abbes
Proceedings of the Second Workshop on Arabic Natural Language Processing
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Co-authors
- Djamel Mostefa 1
- Jaber Abualasal 1
- Omar Asbayou 1
- Ramzi Abbès 1
- Haitham Seelawi 1
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