الهوكاثون: كشف وتصنيف الفكاهة والجريمة "مهمة في المنافسة في Semeval 2021 تركز على الكشف عن مستوى الفكاهة والتقييم في الجمل، وكذلك مستوى اللياء الوارد في هذه النصوص مع النغمات الفكاهية.في هذه الورقة، نقدم نهجا يعتمد على تقنيات التعلم العميقة الأخيرة من خلال محاولة تدريب النماذج القائمة على مجموعة البيانات فقط ومحاولة ضبط النماذج المدربة مسبقا على Corpus Gigantic.
The HaHackathon: Detecting and Rating Humor and Offense'' task at the SemEval 2021 competition focuses on detecting and rating the humor level in sentences, as well as the level of offensiveness contained in these texts with humoristic tones. In this paper, we present an approach based on recent Deep Learning techniques by both trying to train the models based on the dataset solely and by trying to fine-tune pre-trained models on the gigantic corpus.
References used
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