The Currents of Conflict: Decomposing Conflict Trends with Gaussian Processes
- URL: http://arxiv.org/abs/2506.06828v1
- Date: Sat, 07 Jun 2025 15:16:28 GMT
- Title: The Currents of Conflict: Decomposing Conflict Trends with Gaussian Processes
- Authors: Simon P. von der Maase,
- Abstract summary: I show how we can use highly temporally and spatially disaggregated data on conflict events to estimate temporospatial conflict trends.<n>These trends can be studied to gain insight into conflict traps, diffusion and tempo-spatial conflict exposure.<n>Finally, the approach allow us to extrapolate the estimated tempo-spatial conflict patterns into future temporal units.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: I present a novel approach to estimating the temporal and spatial patterns of violent conflict. I show how we can use highly temporally and spatially disaggregated data on conflict events in tandem with Gaussian processes to estimate temporospatial conflict trends. These trends can be studied to gain insight into conflict traps, diffusion and tempo-spatial conflict exposure in general; they can also be used to control for such phenomenons given other estimation tasks; lastly, the approach allow us to extrapolate the estimated tempo-spatial conflict patterns into future temporal units, thus facilitating powerful, stat-of-the-art, conflict forecasts. Importantly, these results are achieved via a relatively parsimonious framework using only one data source: past conflict patterns.
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