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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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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. 1 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 1 st in nine and 2 nd in four tracks.

Topics & Concepts

Computer scienceNatural language processingTransformerSecurity tokenEncoderArtificial intelligenceLanguage modelEvent (particle physics)Task (project management)EconomicsQuantum mechanicsVoltagePhysicsManagementOperating systemComputer securityTopic ModelingNatural Language Processing TechniquesSoftware Engineering Research