A System for Worldwide COVID-19 Information Aggregation (2008.01523v2)
Abstract: The global pandemic of COVID-19 has made the public pay close attention to related news, covering various domains, such as sanitation, treatment, and effects on education. Meanwhile, the COVID-19 condition is very different among the countries (e.g., policies and development of the epidemic), and thus citizens would be interested in news in foreign countries. We build a system for worldwide COVID-19 information aggregation containing reliable articles from 10 regions in 7 languages sorted by topics. Our reliable COVID-19 related website dataset collected through crowdsourcing ensures the quality of the articles. A neural machine translation module translates articles in other languages into Japanese and English. A BERT-based topic-classifier trained on our article-topic pair dataset helps users find their interested information efficiently by putting articles into different categories.
- Akiko Aizawa (74 papers)
- Frederic Bergeron (1 paper)
- Junjie Chen (89 papers)
- Fei Cheng (46 papers)
- Katsuhiko Hayashi (28 papers)
- Kentaro Inui (119 papers)
- Hiroyoshi Ito (1 paper)
- Daisuke Kawahara (21 papers)
- Masaru Kitsuregawa (6 papers)
- Hirokazu Kiyomaru (6 papers)
- Masaki Kobayashi (39 papers)
- Takashi Kodama (9 papers)
- Sadao Kurohashi (55 papers)
- Qianying Liu (30 papers)
- Masaki Matsubara (4 papers)
- Yusuke Miyao (35 papers)
- Atsuyuki Morishima (3 papers)
- Yugo Murawaki (9 papers)
- Kazumasa Omura (1 paper)
- Haiyue Song (18 papers)