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ACLED Event Analysis×Spatial Conflict Analysis×
BidangInternational RelationsInternational Relations
KeluargaProcess / pipelineRegression model
Tahun asal20102002
PengasasClionadh Raleigh, Andrew Linke, Håvard Hegre & Joakim KarlsenSpatial-analysis-of-conflict literature (e.g., Michael Ward & Kristian Skrede Gleditsch)
JenisDisaggregated coding and analysis of political-violence eventsSpatial regression / spatial-statistical modeling of conflict
Sumber perintisRaleigh, C., Linke, A., Hegre, H., & Karlsen, J. (2010). Introducing ACLED: An armed conflict location and event dataset. Journal of Peace Research, 47(5), 651–660. 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 ↗
AliasACLED Analysis, Armed Conflict Location and Event Data, Political Violence Event Analysis, Disaggregated Conflict Event AnalysisSpatial Analysis of War and Peace, Geographic Conflict Modeling, Spatial Econometrics of Conflict, Georeferenced Conflict Analysis
Berkaitan33
RingkasanACLED event analysis is the disaggregated study of political violence and protest using the Armed Conflict Location and Event Data project, introduced by Raleigh, Linke, Hegre, and Karlsen (2010). ACLED codes individual events — battles, violence against civilians, riots, protests, explosions and remote violence, and strategic developments — with their date, location, actors, and any fatalities, updated on a near-weekly basis. Its fine granularity and timeliness make it a workhorse for mapping, monitoring, and modeling where, when, and by whom political violence occurs.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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ScholarGateBandingkan kaedah: ACLED Event Analysis · Spatial Conflict Analysis. Dicapai 2026-06-24 daripada https://scholargate.app/ms/compare