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A new geography of civil war: a machine learning approach to measuring the zones of armed conflicts

Published online by Cambridge University Press:  13 May 2020

Kyosuke Kikuta*
Affiliation:
Osaka School of International Public Policy, Osaka University, 1-31 Machikaneyamacho, Toyonaka, Osaka, 560-0043, Japan
*
*Corresponding author. Email: kikuta@osipp.osaka-u.ac.jp
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Abstract

Where do armed conflicts occur? In applied studies, we may take ad hoc approaches to answer this question. In some regression studies, for instance, a single conflict event can cause an entire province to be classified as a conflict zone. In this paper, I fill this void of knowledge by developing a machine learning method that is less dependent on the areal-unit assumptions and can flexibly estimate conflict zones. I apply the method to a conflict event dataset and create a new dataset of conflict zones. A replication of Daskin and Pringle (2018, Nature 553, 328–332) with the new dataset indicates that the effect of civil war on mammal populations is much smaller than the original estimate.

Information

Type
Original Article
Creative Commons
Creative Common License - CCCreative Common License - BYCreative Common License - NCND
This is an Open Access article, distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivatives licence (http://creativecommons.org/licenses/by-ncnd/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is unaltered and is properly cited. The written permission of Cambridge University Press must be obtained for commercial re-use or in order to create a derivative work.
Copyright
Copyright © The European Political Science Association 2020
Figure 0

Figure 1. Zones of the Somali Civil War.Note: The figure maps conflict zones of the Somali Civil War (1989–2017) created by existing zoning methods. All of the results are created from the same dataset of conflict events (UCDP GED; black dots).

Figure 1

Figure 2. Zoning function.Note: The figure shows a stylized example of a zoning function that maps every location to a conflict zone (Y = 1; red area) and non-conflict zone (Y = 0; remaining white area).

Figure 2

Figure 3. Stylized example of the OCSVM.Note: The figure shows an example of the OCSVM with hypothetical data. The left pane plots the observed events with respect to two predictors, x1 and x2 (say, longitude and latitude). The right pane plots the observations transformed by a flexible function φ. In the right pane, the red circle is the fitted OCSVM, the points on the edge of the circle constitute a support vector, and points outside of the circle are outliers (events that reflect stochastic errors). By transforming the circle back to the original space, one can obtain the estimated zone as well as the outliers.

Figure 3

Figure 4. Simulation: performance comparison.Note: The figures shows the performances of PRIOGRID assignment (yellow dot-long-dashed line), district assignment (gray long-dashed line), a convex hull (purple dot-dashed line), support vector machine (blue dotted line), maximum entropy method (green dashed line), and OCSVM (red solid line). The upper and lower panes show the results when the territories of Nigeria and Somalia are used in the simulation respectively. The horizontal axis shows the level of noise in the observed data (σ). The vertical axis shows the accuracy. The confidence intervals are very small and hence not reported.

Figure 4

Figure 5. Validation: performance comparison.Note: The figure shows the results of the two-fold cross-validation tests. The vertical axis is average accuracy over 500 cross-validation tests (thus 2 × 500 = 1000 simulations). The confidence intervals are very small and hence not reported.

Figure 5

Figure 6. Estimated zones of the Rohingya housing destruction.Note: The figure shows the zones of the Rohingya housing destruction estimated by the six methods. The red points show the villages that suffered “few housing destruction” or more between 31 August 2017 and 31 March 2018. The white points villages that did not suffer any housing destruction. Those data are derived from UNITAR (2018). The red areas are the estimated zones.

Figure 6

Figure 7. Time-invariant estimates of conflict zones in Africa.Note: The figure maps the time-invariant estimates of conflict zones. The left and right panes are the updated UCDP Polygons dataset and the OCSVM estimates respectively. The conflict names are shown at the bottom with corresponding colors. For graphical purposes, the conflict zones are limited to those of state-based conflicts in Africa. For readers of monotone prints, please refer to the online article.

Figure 7

Table 1. The effects of armed conflicts on the mammal population

Figure 8

Figure 8. The ecological costs of armed conflict.Note: The figure shows the estimated trajectories of a hypothetical mammal population. The initial size of the population is 100 thousands. The left and right panes show the population trajectories estimated with the UCDP Polygons (exact replication of Daskin and Pringle (2018)) and with the OCSVM-based conflict zones. The dotted blue lines are the population trajectories in protected areas any part of which does not experience armed conflict. The solid red lines are the population trajectories in protected areas which totally belong to conflict zones.

Supplementary material: Link

Kikuta Dataset

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Supplementary material: PDF

Kikuta Supplementary Materials

Kikuta Supplementary Materials

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