ID | 180673 |
Title Proper | Reassessing the role of theory and machine learning in forecasting civil conflict |
Language | ENG |
Author | Ward, Michael D ; Beger, Andreas ; Morgan, Richard K |
Summary / Abstract (Note) | We examine the research protocols in Blair and Sambanis’ recent article on forecasting civil wars, where they argue that their theory-based model can predict civil war onsets better than several atheoretical alternatives or a model with country-structural factors. We find that there are several important mistakes and that their key finding is entirely conditional on the use of parametrically smoothed ROC curves when calculating accuracy, rather than the standard empirical ROC curves that dominate the literature. Fixing these mistakes results in a reversal of their claim that theory-based models of escalation are better at predicting onsets of civil war than other kinds of models. Their model is outperformed by several of the ad hoc, putatively non-theoretical models they devise and examine. More importantly, we argue that rather than trying to contrast the roles of theory and “atheoretical” machine learning in predictive modeling, it would be more productive to focus on ways in which predictive modeling and machine learning could be used to strengthen extant predictive work. Instead, we argue that predictive modeling and machine learning are effective tools for theory testing. |
`In' analytical Note | Journal of Conflict Resolution Vol. 65, No.7-8; Aug-Sep 2021: p.1405–1426 |
Journal Source | Journal of Conflict Resolution Vol: 65 No 7-8 |
Key Words | Forecasting ; Civil Wars ; Internal armed Conflict ; Prediction ; Modeling ; Replication ; Civil War |