Information abstraction from crises related tweets using recurrent neural network

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Abstract

Social media has become an important open communication medium during crises. The information shared about a crisis in social media is massive, complex, informal and heterogeneous, which makes extracting useful information a difficult task. This paper presents a first step towards an approach for information extraction from large Twitter data. In brief, we propose a Recurrent Neural Network based model for text generation able to produce a unique text capturing the general consensus of a large collection of twitter messages. The generated text is able to capture information about different crises from tens of thousand of tweets summarized only in a 2000 characters text.

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Ben Lazreg, M., Goodwin, M., & Granmo, O. C. (2016). Information abstraction from crises related tweets using recurrent neural network. In IFIP Advances in Information and Communication Technology (Vol. 475, pp. 441–452). Springer New York LLC. https://doi.org/10.1007/978-3-319-44944-9_38

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