Publication Type : Conference Paper
Publisher : IEEE
Source : 2020 IEEE Global Humanitarian Technology Conference (GHTC), pp. 1-8. IEEE, 2020
Url : https://ieeexplore.ieee.org/document/9342921
Campus : Amritapuri
Center : Amrita Center for Wireless Networks and Applications (AmritaWNA)
Year : 2020
Abstract : The exponential escalation of disaster loss in our country has led to the awareness that disaster risks are presumably increasing. As per statistics, India has confronted 371 natural hazards over the past few decades and severe casualties, infrastructural, agricultural and economic damages were recorded [1]. Credible and real time data such as news content are accessible liberally in legitimate websites and its analysis may provide assistance in administering hazard emergencies, preparedness and relief efficiently. On this grounds, a data scraping approach is proposed to gather hazard relevant news stories from the web by building a crawler software and incorporate machine learning approaches to filter out insightful information. The developed crawler software visits news reporting web pages and extracts news stories related to hazards. News illustrations are often unstructured as it includes less newsworthy content such as author’s opinions, interview responses and past studies. Hence, a supervised learning based text classification is performed to classify newsworthy content from news articles and approximately 70 percent accuracy was achieved.
Cite this Research Publication : Gopal, Lakshmi S., Rekha Prabha, Divya Pullarkatt, and Maneesha Vinodini Ramesh. "Machine learning based classification of online news data for disaster management." In 2020 IEEE Global Humanitarian Technology Conference (GHTC), pp. 1-8. IEEE, 2020