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Cross-Lingual Disaster-related Multi-label Tweet Classification with Manifold Mixup

Jishnu Ray Chowdhury, Cornelia Caragea, Doina Caragea

202028 citationsDOIOpen Access PDF

Abstract

Distinguishing informative and actionable messages from a social media platform like Twitter is critical for facilitating disaster management. For this purpose, we compile a multilingual dataset of over 130K samples for multilabel classification of disaster-related tweets. We present a masking-based loss function for partially labeled samples and demonstrate the effectiveness of Manifold Mixup in the text domain. Our main model is based on Multilingual BERT, which we further improve with Manifold Mixup. We show that our model generalizes to unseen disasters in the test set. Furthermore, we analyze the capability of our model for zero-shot generalization to new languages. Our code, dataset, and other resources are available on Github. 1

Topics & Concepts

Computer scienceGeneralizationMasking (illustration)Set (abstract data type)Manifold (fluid mechanics)Function (biology)Domain (mathematical analysis)CompilerCode (set theory)Social mediaArtificial intelligenceInformation retrievalNatural language processingWorld Wide WebMathematicsProgramming languageArtMechanical engineeringVisual artsMathematical analysisEngineeringBiologyEvolutionary biologySentiment Analysis and Opinion MiningPublic Relations and Crisis CommunicationText and Document Classification Technologies
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