Extracting war incidents from news articles via deep Sequence Tagging

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An important natural language processing (NLP) task is to extract structured information from free text. In this thesis, we focus on the problem of extracting war incidents from news articles. A war incident is a tuple consisting of a location of the incident, the actor, the cause of death, and the number of casualties. We employ OpenTag [1], a deep sequence-tagging approach, followed by a series of flat classifiers to achieve this task. To train our sequence tagging model and the flat classifiers, we utilize a dataset of news articles surrounding the Syrian war. Our approach, which utilizes sequence tagging, outperforms baseline classifiers that rely solely on the text of the news articles.

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Thesis. M.S. American University of Beirut. Department of Computer Science, 2019. T:7093.
Advisor : Dr. Shady Elbassuoni, Assistant Professor, Computer Science ; Members of Committee : Dr. Fatima Abu Salem, Associate Professor, Computer Science ; Dr. Mohamed El Baker Nassar, Assistant Professor, Computer Science.
Includes bibliographical references (leaves 122-123)

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