Online processing of social media data for emergency management
Authors: Pohl, D., Bouchachia, A., Hellwagner, H.
Journal: Proceedings 2013 12th International Conference on Machine Learning and Applications Icmla 2013
Publication Date: 01/01/2013
Volume: 1
Pages: 408-413
DOI: 10.1109/ICMLA.2013.83
Abstract:Social media offers an opportunity for emergency management to identify issues that need immediate reaction. To support the effective use of social media, an analysis approach is needed to identify crisis-related hotspots. We consider in this investigation the analysis of social media (i.e., Twitter, Flickr and YouTube) to support emergency management by identifying sub-events. Sub-events are significant hotspots that are of importance for emergency management tasks. Aiming at sub-event detection, recognition and tracking, the data is processed online in real-time. We introduce an incremental feature selection mechanism to identify meaningful terms and use an online clustering algorithm to uncover sub-events on-the-fly. Initial experiments are based on tweets enriched with Flickr and YouTube data collected during Hurricane Sandy. They show the potential of the proposed approach to monitor sub-events for real-world emergency situations. © 2013 IEEE.
Source: Scopus
Online Processing of Social Media Data for Emergency Management
Authors: Pohl, D., Bouchachia, A., Hellwagner, H.
Journal: 2013 12TH INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS (ICMLA 2013), VOL 1
Publication Date: 2013
Pages: 408-413
DOI: 10.1109/ICMLA.2013.83
Source: Web of Science
Online Processing of Social Media Data for Emergency Management
Authors: Pohl, D., Bouchachia, A., Hellwagner, H.
Conference: International conference on Machine Learning and Applications
Dates: 04/12/2013
Publication Date: 04/12/2013
Source: Manual
Preferred by: Hamid Bouchachia