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Arabic Fine-Grained Entity Recognition
Traditional NER systems are typically trained to recognize coarse-grained entities, and less attention is given to classifying entities …
Haneen Liqreina
,
Mustafa Jarrar
,
Mohammed Khalilia
,
Ahmed El-Shangiti
,
Muhammad Abdul-Mageed
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ArBanking77: Intent Detection Neural Model and a New Dataset in Modern and Dialectical Arabic
This paper presents the ArBanking77, a large Arabic dataset for intent detection in the banking domain. Our dataset was arabized and …
Mustafa Jarrar
,
Ahmet Birim
,
Mohammed Khalilia
,
Mustafa Erden
,
Sana Ghanem
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SALMA: Arabic Sense-Annotated Corpus and WSD Benchmarks
SALMA, the first Arabic sense-annotated corpus, consists of 34K tokens, which are all sense-annotated. The corpus is annotated using …
Mustafa Jarrar
,
Sanad Malaysha
,
Tymaa Hammouda
,
Mohammed Khalilia
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WojoodNER 2023: The First Arabic Named Entity Recognition Shared Task
We present WojoodNER-2023, the first Arabic Named Entity Recognition (NER) Shared Task. The primary focus of WojoodNER 2023 is on …
Mustafa Jarrar
,
Muhammad Abdul-Mageed
,
Mohammed Khalilia
,
Bashar Talafha
,
AbdelRahim Elmadany
,
Nagham Hamad
,
Alaa' Omar
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Offensive Hebrew Corpus and Detection using BERT
Offensive language detection has been well studied in many languages, but it is lagging behind in low-resource languages, such as …
Nagham Hamad
,
Mustafa Jarrar
,
Mohammed Khalilia
,
Nadim Nashif
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Context-Gloss Augmentation for Improving Arabic Target Sense Verification
Arabic language lacks semantic datasets and sense inventories. The most common semantically-labeled dataset for Arabic is the …
Sanad Malaysha
,
Mustafa Jarrar
,
Mohammed Khalilia
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Wojood - Arabic NER
Wojood consists of about 550K tokens (MSA and dialect) that are manually annotated with 21 entity types (e.g., person, organization, location, event, date, etc). It covers multiple domains and was annotated with nested entities. The corpus contains about 75K entities and 22.5% of which are nested. A nested named entity recognition (NER) model based on BERT was trained (F1-score 88.4%).
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Wojood: Nested Arabic Named Entity Corpus and Recognition using BERT
This paper presents Wojood, a corpus for Arabic nested Named Entity Recognition (NER). Nested entities occur when one entity mention is …
Mustafa Jarrar
,
Mohammed Khalilia
,
Sana Ghanem
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Comprehend Medical: A Named Entity Recognition and Relationship Extraction Web Service
Comprehend Medical is a stateless and Health Insurance Portability and Accountability Act (HIPAA) eligible Named Entity Recognition …
Parminder Bhatia
,
Busra Celikkaya
,
Mohammed Khalilia
,
Selvan Senthivel
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DOI
Joint Entity Extraction and Assertion Detection for Clinical Text
Negative medical findings are prevalent in clinical reports, yet discriminating them from positive findings remains a challenging task …
Parminder Bhatia
,
Busra Celikkaya
,
Mohammed Khalilia
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