Title :
Data Mining Meets the Needs of Disaster Information Management
Author :
Li Zheng ; Chao Shen ; Liang Tang ; Chunqiu Zeng ; Tao Li ; Luis, Steve ; Shu-Ching Chen
Author_Institution :
Sch. of Comput. & Inf. Sci., Florida Int. Univ., Miami, FL, USA
Abstract :
Techniques to efficiently discover, collect, organize, search, and disseminate real-time disaster information have become national priorities for efficient crisis management and disaster recovery tasks. We have developed techniques to facilitate information sharing and collaboration between both private and public sector participants for major disaster recovery planning and management. We have designed and implemented two parallel systems: a web-based prototype of a Business Continuity Information Network system and an All-Hazard Disaster Situation Browser system that run on mobile devices. Data mining and information retrieval techniques help impacted communities better understand the current disaster situation and how the community is recovering. Specifically, information extraction integrates the input data from different sources; report summarization techniques generate brief reviews from a large collection of reports at different granularities; probabilistic models support dynamically generating query forms and information dashboard based on user feedback; and community generation and user recommendation techniques are adapted to help users identify potential contacts for report sharing and community organization. User studies with more than 200 participants from EOC personnel and companies demonstrate that our systems are very useful to gain insights about the disaster situation and for making decisions.
Keywords :
Internet; business continuity; data mining; emergency management; information retrieval; probability; recommender systems; EOC personnel; Web-based prototype; all-hazard disaster situation browser system; business continuity information network system; community generation; crisis management; data mining; disaster information management; disaster recovery planning; disaster recovery tasks; information dashboard; information extraction; information retrieval techniques; mobile devices; private sector participants; probabilistic models; public sector participants; query forms; real-time disaster information; report summarization techniques; user feedback; user recommendation techniques; Contingency management; Data mining; Disaster management; Information management; Information retrieval; Real time systems; Data mining; disaster information management; dynamic query form; hierarchical summarization; user recommendation;
Journal_Title :
Human-Machine Systems, IEEE Transactions on
DOI :
10.1109/THMS.2013.2281762