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arxiv: 1207.1497 · v3 · pith:NRERAOBQnew · submitted 2012-07-06 · 📊 stat.AP · cs.SI· physics.data-an· physics.soc-ph

Hidden Markov models for the activity profile of terrorist groups

classification 📊 stat.AP cs.SIphysics.data-anphysics.soc-ph
keywords profileactivityunderlyingcasedevelopeddynamicsgrouphidden
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The main focus of this work is on developing models for the activity profile of a terrorist group, detecting sudden spurts and downfalls in this profile, and, in general, tracking it over a period of time. Toward this goal, a $d$-state hidden Markov model (HMM) that captures the latent states underlying the dynamics of the group and thus its activity profile is developed. The simplest setting of $d=2$ corresponds to the case where the dynamics are coarsely quantized as Active and Inactive, respectively. A state estimation strategy that exploits the underlying HMM structure is then developed for spurt detection and tracking. This strategy is shown to track even nonpersistent changes that last only for a short duration at the cost of learning the underlying model. Case studies with real terrorism data from open-source databases are provided to illustrate the performance of the proposed methodology.

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