Machine Learning Conflict Prediction
Machine learning conflict prediction uses flexible supervised algorithms — random forests, gradient boosting, neural networks, regularized regression — to forecast the onset of armed conflict from large sets of features, prioritizing out-of-sample predictive accuracy over coefficient interpretation. Muchlinski, Siroky, He, and Kocher (2016) showed that random forests substantially outperform logistic regression at predicting class-imbalanced civil-war onset, catalyzing a shift in conflict research toward algorithmic prediction, rigorous out-of-sample validation, and the recognition that explanation and prediction are distinct goals.
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Sources
- Muchlinski, D., Siroky, D., He, J., & Kocher, M. (2016). Comparing random forest with logistic regression for predicting class-imbalanced civil war onset data. Political Analysis, 24(1), 87–103. DOI: 10.1093/pan/mpv024 ↗
How to cite this page
ScholarGate. (2026, June 22). Machine Learning Methods for Predicting Armed Conflict. ScholarGate. https://scholargate.app/en/international-relations/machine-learning-conflict-prediction
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- Dyadic Conflict AnalysisInternational Relations↔ compare
- Logistic RegressionResearch Statistics↔ compare