Title :
Dynamic Graph Analytic Framework (DYGRAF) for biosurveillance support
Author :
Margitus, Michael R. ; Tagliaferri, William A. ; Sudit, Moises
Author_Institution :
CUBRC, Inc., Rome, NY, USA
Abstract :
In this work, we leverage Dynamic Graph Analytic Framework (DYGRAF), a domain agnostic framework from which data alignment, data association and layered multi-modal network analysis can be performed. By applying DYGRAF to the discipline of biosurveillance, and incorporating disparate yet related data sets stemming from medical, communication, and financial domains, salient information about the origin and propagation of a pandemic can be identified, including the key people and locations involved in the spread of a disease within and across communities. Through the identification and leveraging of this information, DYGRAF enables an analyst to gain a greater understanding of the current situation, allowing the analyst to develop strategies to limit the extent and effects of the pandemic.
Keywords :
data analysis; decision support systems; diseases; graph theory; medical computing; DYGRAF framework; biosurveillance support; data alignment; data association; domain agnostic framework; dynamic graph analytic framework; layered multimodal network analysis; Admittance; Cities and towns; Diseases; Hospitals; Monitoring; Pain; Semantics; biosurveillance; information fusion; multi-modal network analysis; situation awareness; social network analysis;
Conference_Titel :
Information Fusion (FUSION), 2013 16th International Conference on
Conference_Location :
Istanbul
Print_ISBN :
978-605-86311-1-3