IBM MNLP IE at CASE 2021 Task 1: Multigranular and Multilingual Event Detection on Protest News

Parul Awasthy, Jian Ni, Ken Barker, Radu Florian
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引用次数: 13

Abstract

In this paper, we present the event detection models and systems we have developed for Multilingual Protest News Detection - Shared Task 1 at CASE 2021. The shared task has 4 subtasks which cover event detection at different granularity levels (from document level to token level) and across multiple languages (English, Hindi, Portuguese and Spanish). To handle data from multiple languages, we use a multilingual transformer-based language model (XLM-R) as the input text encoder. We apply a variety of techniques and build several transformer-based models that perform consistently well across all the subtasks and languages. Our systems achieve an average F_1 score of 81.2. Out of thirteen subtask-language tracks, our submissions rank 1st in nine and 2nd in four tracks.
IBM MNLP IE在CASE 2021任务1:抗议新闻的多粒度和多语言事件检测
在本文中,我们介绍了我们为CASE 2021的多语言抗议新闻检测-共享任务1开发的事件检测模型和系统。共享任务有4个子任务,它们涵盖了不同粒度级别(从文档级别到令牌级别)和跨多种语言(英语、印地语、葡萄牙语和西班牙语)的事件检测。为了处理来自多种语言的数据,我们使用基于多语言转换器的语言模型(XLM-R)作为输入文本编码器。我们应用了各种各样的技术,并构建了几个基于转换器的模型,这些模型在所有子任务和语言之间表现一致。我们的系统平均F_1得分为81.2。在13个子任务语言轨道中,我们的提交在9个轨道中排名第一,在4个轨道中排名第二。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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