SPEED++: A Multilingual Event Extraction Framework for Epidemic Prediction and Preparedness
Tanmay Parekh, Jeffrey Kwan, Jiarui Yu, Sparsh Johri, Hyosang Ahn,, Sreya Muppalla, Kai-Wei Chang, Wei Wang, Nanyun Peng

TL;DR
SPEED++ is a multilingual event extraction framework that uses zero-shot learning to identify epidemic-related events across diverse languages, enabling early warnings and community discussion analysis without language-specific training.
Contribution
The paper introduces SPEED++, the first multilingual event extraction framework for epidemics, extending an ontology, creating a multilingual dataset, and demonstrating zero-shot cross-lingual capabilities.
Findings
Effective early epidemic warning detection in Chinese Weibo posts
Zero-shot models successfully extract epidemic events in 65 languages
Framework aids misinformation detection and public attention monitoring
Abstract
Social media is often the first place where communities discuss the latest societal trends. Prior works have utilized this platform to extract epidemic-related information (e.g. infections, preventive measures) to provide early warnings for epidemic prediction. However, these works only focused on English posts, while epidemics can occur anywhere in the world, and early discussions are often in the local, non-English languages. In this work, we introduce the first multilingual Event Extraction (EE) framework SPEED++ for extracting epidemic event information for a wide range of diseases and languages. To this end, we extend a previous epidemic ontology with 20 argument roles; and curate our multilingual EE dataset SPEED++ comprising 5.1K tweets in four languages for four diseases. Annotating data in every language is infeasible; thus we develop zero-shot cross-lingual cross-disease…
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Taxonomy
TopicsData-Driven Disease Surveillance
MethodsSoftmax · Attention Is All You Need · Ontology
