DocumentCode :
3746869
Title :
Using causal models in heterogeneous information fusion to detect terrorists
Author :
Paul K. Davis;David Manheim;Walter L. Perry;John Hollywood
Author_Institution :
Engineering and Applied Sciences Department, RAND and Pardee RAND Graduate School, 1776 Main Street, Santa Monica, CA 90407-2138, USA
fYear :
2015
Firstpage :
2586
Lastpage :
2597
Abstract :
We describe basic research that uses a causal, uncertainty-sensitive computational model rooted in qualitative social science to fuse disparate pieces of threat information. It is a cognitive model going beyond rational-actor methods. Having such a model has proven useful when information is uncertain, fragmentary, indirect, soft, conflicting, and even deceptive. Inferences from fusion must then account for uncertainties about the model, the credibility of information, and the fusion methods - i.e. we must consider both structural and parametric uncertainties, including uncertainties about the uncertainties. We use a novel combination of (1) probabilistic and parametric methods, (2) alternative models and model structures, and (3) alternative fusion methods that include nonlinear algebraic combination, variants of Bayesian inference, and a new entropy-maximizing approach. Initial results are encouraging and suggest that such an analytically flexible and model-based approach to fusion can simultaneously enrich thinking, enhance threat detection, and reduce harmful false alarms.
Keywords :
"Uncertainty","Terrorism","Computational modeling","Probabilistic logic","Mathematical model","Bayes methods","Analytical models"
Publisher :
ieee
Conference_Titel :
Winter Simulation Conference (WSC), 2015
Electronic_ISBN :
1558-4305
Type :
conf
DOI :
10.1109/WSC.2015.7408367
Filename :
7408367
Link To Document :
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