An Autonomous Machine Learning Approach for Global Terrorist Recognition
Affiliation
Avum, Inc.Issue Date
2012-10Keywords
reconnaissancedata fusion
intelligent agent
service-based framwork
data compression
derived data
machine learning
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Copyright © held by the author; distribution rights International Foundation for TelemeteringCollection Information
Proceedings from the International Telemetering Conference are made available by the International Foundation for Telemetering and the University of Arizona Libraries. Visit http://www.telemetry.org/index.php/contact-us if you have questions about items in this collection.Abstract
A major intelligence challenge we face in today's national security environment is the threat of terrorist attack against our national assets, especially our citizens. This paper addresses global reconnaissance which incorporates an autonomous Intelligent Agent/Data Fusion solution for recognizing potential risk of terrorist attack through identifying and reporting imminent persona-oriented terrorist threats based on data reduction/compression of a large volume of low latency data possibly from hundreds, or even thousands of data points.Sponsors
International Foundation for TelemeteringISSN
0884-51230074-9079