Nonlinear Dynamic Models of Conflict via Multiplexed Interaction Networks
September 27, 2019 Β· Declared Dead Β· π arXiv.org
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Authors
Gerardo Aquino, Weisi Guo, Alan Wilson
arXiv ID
1909.12457
Category
physics.soc-ph
Cross-listed
cs.SI
Citations
8
Venue
arXiv.org
Last Checked
3 months ago
Abstract
The risk of conflict is exasperated by a multitude of internal and external factors. Current multivariate analysis paints diverse causal risk profiles that vary with time. However, these profiles evolve and a universal model to understand that evolution remains absent. Most of the current conflict analysis is data-driven and conducted at the individual country or region level, often in isolation. Consistent consideration of multi-scale interactions and their non-linear dynamics is missing. Here, we develop a multiplexed network model, where each city is modelled as a non-linear bi-stable system with stable states in either war or peace. The causal factor categories which exasperate the risk of conflict are each modelled as a network layer. We consider 3 layers: (1) core geospatial network of interacting cities reflecting ground level interactions, (2) cultural network of interacting countries reflecting cultural groupings, and (3) political network of interacting countries reflecting alliances. Together, they act as drivers to push cities towards or pull cities away from war. Using a variety of data sources relative to 2002-2016, we show, that our model correctly predicts the transitions from war to peace and peace to war with F1 score of 0.78 to 0.92 worldwide at the city scale resolution. As many conflicts during this period are auto-regressive (e.g. the War on Terror in Afghanistan and Iraq, the Narco War across the Americas), we can predict the emergence of new war or new peace. We demonstrate successful predictions across a wide range of conflict genres and we perform causal discovery by identifying which model component led to the correct prediction. In the cases of Somalia (2008-13), Myanmar (2013-15), Colombia (2011-14), Libya (2014-16), and Yemen (2011-13) we identify the set of most likely causal factors and how it may differ across a country and change over time.
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