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Conflict Forecasting×Spatial Conflict Analysis×
FagfeltInternational RelationsInternational Relations
FamilieMachine learningRegression model
Opprinnelsesår20192002
OpphavspersonConflict-forecasting community (e.g., Håvard Hegre and the ViEWS team)Spatial-analysis-of-conflict literature (e.g., Michael Ward & Kristian Skrede Gleditsch)
TypeOperational predictive system for armed conflictSpatial regression / spatial-statistical modeling of conflict
Opprinnelig kildeHegre, H., Allansson, M., Basedau, M., Colaresi, M., Croicu, M., Fjelde, H., et al. (2019). ViEWS: A political violence early-warning system. Journal of Peace Research, 56(2), 155–174. DOI ↗Ward, M. D., & Gleditsch, K. S. (2002). Location, location, location: An MCMC approach to modeling the spatial context of war and peace. Political Analysis, 10(3), 244–260. DOI ↗
AliasPolitical Violence Early Warning, Armed Conflict Forecasting, Conflict Early-Warning Systems, ViEWS-Style ForecastingSpatial Analysis of War and Peace, Geographic Conflict Modeling, Spatial Econometrics of Conflict, Georeferenced Conflict Analysis
Relaterte33
SammendragConflict forecasting is the enterprise of producing calibrated, regularly updated probabilistic predictions of where and when armed conflict will occur, to support early warning and prevention. Exemplified by operational systems such as ViEWS (Hegre et al. 2019), it combines historical conflict data and predictors at fine spatial and temporal resolution, fits and ensembles multiple models, and forecasts violence months ahead — then rigorously evaluates those forecasts against what actually happens. It differs from explanatory conflict analysis by being transparent, prospective, and judged on out-of-sample accuracy rather than on coefficients.Spatial conflict analysis models armed conflict while taking geography seriously: conflict is not randomly scattered but clusters in space, and a place's risk depends on its neighbors. Building on georeferenced data and spatial-statistical methods — as in Ward and Gleditsch's (2002) MCMC approach to the spatial context of war and peace — it uses spatial weights, tests for spatial autocorrelation, and fits spatial regression models so that conflict, peace, and their predictors are analyzed as interdependent across locations rather than as isolated observations.
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ScholarGateSammenlign metoder: Conflict Forecasting · Spatial Conflict Analysis. Hentet 2026-06-24 fra https://scholargate.app/no/compare