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Towards Machine Reading for Interventions from Humanitarian-Assistance Program Literature

2019-11-01IJCNLP 2019Unverified0· sign in to hype

Bonan Min, Yee Seng Chan, Haoling Qiu, Joshua Fasching

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Abstract

Solving long-lasting problems such as food insecurity requires a comprehensive understanding of interventions applied by governments and international humanitarian assistance organizations, and their results and consequences. Towards achieving this grand goal, a crucial first step is to extract past interventions and when and where they have been applied, from hundreds of thousands of reports automatically. In this paper, we developed a corpus annotated with interventions to foster research, and developed an information extraction system for extracting interventions and their location and time from text. We demonstrate early, very encouraging results on extracting interventions.

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