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Automated Discovery and Modeling of Sequential Patterns Preceding Events of InterestThe integration of emerging data manipulation technologies has enabled a paradigm shift in practitioners' abilities to understand and anticipate events of interest in complex systems. Example events of interest include outbreaks of socio-political violence in nation-states. Rather than relying on human-centric modeling efforts that are limited by the availability of SMEs, automated data processing technologies has enabled the development of innovative automated complex system modeling and predictive analysis technologies. We introduce one such emerging modeling technology - the sequential pattern methodology. We have applied the sequential pattern methodology to automatically identify patterns of observed behavior that precede outbreaks of socio-political violence such as riots, rebellions and coups in nation-states. The sequential pattern methodology is a groundbreaking approach to automated complex system model discovery because it generates easily interpretable patterns based on direct observations of sampled factor data for a deeper understanding of societal behaviors that is tolerant of observation noise and missing data. The discovered patterns are simple to interpret and mimic human's identifications of observed trends in temporal data. Discovered patterns also provide an automated forecasting ability: we discuss an example of using discovered patterns coupled with a rich data environment to forecast various types of socio-political violence in nation-states.
Document ID
20100012853
Acquisition Source
Langley Research Center
Document Type
Conference Paper
Authors
Rohloff, Kurt
(BBN Technologies Cambridge, MA, United States)
Date Acquired
August 24, 2013
Publication Date
March 1, 2010
Publication Information
Publication: Selected Papers Presented at MODSIM World 2009 Conference and Expo
Subject Category
Systems Analysis And Operations Research
Distribution Limits
Public
Copyright
Public Use Permitted.
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