Published March 25, 2022 | Version v1
Conference paper Open

Multilingual Epidemic Event Extraction

  • 1. University of La Rochelle, L3i, F-17000, La Rochelle, France
  • 2. Sorbonne University
  • 3. University of Innsbruck
  • 4. Multimedia University of Kenya

Description

In this paper, we focus on epidemic event extraction in multilingual and low-resource settings. The task of extracting epidemic events is defined as the detection of disease names and locations in a document. We experiment with a multilingual dataset comprising news articles from the medical domain with diverse morphological structures (Chinese, English, French, Greek, Polish, and Russian). We investigate various Transformer-based models, also adopting a two-stage strategy, first finding the documents that contain events and then performing event extraction. Our results show that error propagation to the downstream task was higher than expected. We also perform an in-depth analysis of the results, concluding that different entity characteristics can influence the performance. Moreover, we perform several preliminary experiments for the low-resourced languages present in the dataset using the mean teacher semi-supervised technique. Our findings show the potential of pre-trained language models benefiting from the incorporation of unannotated data in the training process.

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Additional details

Funding

EMBEDDIA – Cross-Lingual Embeddings for Less-Represented Languages in European News Media 825153
European Commission