NSUT-NLP at CASE 2022 Task 1: Multilingual Protest Event Detection using Transformer-based Models

M. Suri, Krishna Chopra, Adwita Arora
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引用次数: 1

Abstract

Event detection, specifically in the socio-political domain, has posed a long-standing challenge to researchers in the NLP domain. Therefore, the creation of automated techniques that perform classification of the large amounts of accessible data on the Internet becomes imperative. This paper is a summary of the efforts we made in participating in Task 1 of CASE 2022. We use state-of-art multilingual BERT (mBERT) with further fine-tuning to perform document classification in English, Portuguese, Spanish, Urdu, Hindi, Turkish and Mandarin. In the document classification subtask, we were able to achieve F1 scores of 0.8062, 0.6445, 0.7302, 0.5671, 0.6555, 0.7545 and 0.6702 in English, Spanish, Portuguese, Hindi, Urdu, Mandarin and Turkish respectively achieving a rank of 5 in English and 7 on the remaining language tasks.
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NSUT-NLP在CASE 2022任务1:使用基于变压器的模型进行多语言抗议事件检测
事件检测,特别是在社会政治领域,对NLP领域的研究人员提出了一个长期的挑战。因此,创建对Internet上大量可访问数据进行分类的自动化技术变得势在必行。本文是我们在参与CASE 2022的Task 1中所做努力的总结。我们使用最先进的多语言BERT (mBERT)进行进一步的微调,以执行英语,葡萄牙语,西班牙语,乌尔都语,印地语,土耳其语和普通话的文档分类。在文档分类子任务中,我们能够在英语、西班牙语、葡萄牙语、印地语、乌尔都语、普通话和土耳其语中分别获得0.8062、0.6445、0.7302、0.5671、0.6555、0.7545和0.6702的F1分数,在英语中获得5分,在其余语言任务中获得7分。
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