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Building knowledge base of urban emergency events based on crowdsourcing of social media
Authors
KKR Choo
C Hu
+6 more
L Mei
V Sugumaran
Z Xu
J Xuan
H Zhang
Y Zhu
Publication date
1 October 2016
Publisher
'Wiley'
Doi
Cite
Abstract
Copyright © 2016 John Wiley & Sons, Ltd. An emergency event is an unexceptional event that exceeds the capacity of normal resources and organization to cope and a situation that poses an immediate risk to health, life, property, or environment. Crowdsourcing connects unobtrusive and ubiquitous sensing technologies, advanced data management and analytics models, and novel visualization methods, to create solutions that improve urban environment, human life quality, and city operation systems. The crowdsourcing on social media can be used to detect and analyze urban emergency events. In this paper, in order to detect and describe the real-time urban emergency event, the knowledge base model is proposed. The crowdsourcing-based knowledge base model is firstly introduced, which uses the information from social media. Secondly, the basic definition of the proposed knowledge base model including keywords, patterns, positive sentences, and knowledge graph is given. Thirdly, the temporal information is added to the proposed knowledge base model. The case study on real data sets shows that the proposed algorithm has good performance and high effectiveness in the analysis and detection of emergency events. Copyright © 2016 John Wiley & Sons, Ltd
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Last time updated on 18/10/2019