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Predicting (de-)escalation of sub-national violence using gradient boosting: Does it work?

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  • Jonas Vestby
  • Jürgen Brandsch
  • Vilde Bergstad Larsen
  • Peder Landsverk
  • Andreas Forø Tollefsen

Abstract

This article presents a prediction model of (de-)escalation of sub-national violence using gradient boosting. The prediction model builds on updated data from the PRIO-GRID data aggregator, contributing to the ViEWS prediction competition by predicting changes in violence levels, operationalized using monthly fatalities at the 0.5 × 0.5-degree grid (pgm) level. Our model's predictive performance in terms of mean square error (MSE) is marginally worse than the ViEWS baseline model and inferior to most other submissions, including our own supervised random forest model. However, while we knew that the model was comparatively worse than our random forest model in terms of MSE, we propose the gradient boosting model because it performed better where it matters—in predicting when (de-)escalation happens. This choice means that we question the usefulness of using MSE for evaluating model performance and instead propose alternative performance measurements that are needed to understand the usefulness of predictive models. We argue that future endeavors using this outcome should measure their performance using the Concordance Correlation, which takes both the trueness and the precision elements of accuracy into account, and, unlike MSE, seems to be robust to the issues caused by zero inflation.Este artículo presenta un modelo de predicción de la desescalada de la violencia subnacional mediante el uso de la potenciación del gradiente. El modelo de predicción se basa en los datos actualizados que provienen del agregador de datos de PRIO-GRID, contribuye al concurso de predicciones de ViEWS al predecir cambios en los niveles de violencia y es operacionalizado utilizando las muertes mensuales a nivel de cuadrícula de 0.5 × 0.5 grados (pgm). El rendimiento predictivo de nuestro modelo desde el punto de vista del error cuadrático medio (mean square error, MSE) es ligeramente peor que el modelo de referencia del sistema de alerta temprana sobre la violencia (Violence Early Warning System, ViEWS) e inferior en relación con la mayoría de las otras presentaciones, incluido nuestro modelo de bosque aleatorio y supervisado. No obstante, si bien sabíamos que el modelo era comparativamente peor que nuestro modelo de bosque aleatorio en relación con el MSE, proponemos el modelo de potenciación del gradiente porque funcionó mejor en el aspecto que importa: predecir cuándo ocurre la desescalada. Esta elección significa que cuestionamos la utilidad del uso del MSE para evaluar el rendimiento del modelo y, en cambio, proponemos mediciones de rendimiento alternativas que son necesarias para comprender la utilidad de los modelos predictivos. Sostenemos que, en los futuros proyectos en los que se utilice este resultado, se debería medir el rendimiento mediante la correlación de concordancia, la cual tiene en cuenta tanto los elementos de veracidad como los de precisión de la exactitud y, a diferencia del MSE, parece ser resistente a los problemas generados por la inflación cero.Cet article présente un modèle de prédiction de la (dés)escalade de la violence infranationale utilisant un boosting de gradient. Ce modèle de prédiction repose sur des données à jour de l’agrégateur de données de la grille PRIO. Il contribue au concours de prédiction ViEWS (Violence early-warning system, système d’alerte précoce sur la violence) en prédisant les évolutions des niveaux de violence qui sont opérationnalisés sur la base du nombre mensuel de décès au niveau 0.5 × 0.5 degré de la grille (PGM). Les performances prédictives de notre modèle en termes d’erreur quadratique moyenne (EQM) sont légèrement moins bonnes que celles du modèle de référence ViEWS et inférieures à la plupart des autres modèles soumis, y compris à celles de notre propre modèle à forêt aléatoire supervisée. Cependant, bien que nous sachions que ce modèle à boosting de gradient était comparativement moins bon que notre modèle à forêt aléatoire en termes d’EQM, nous l’avons proposé car il était plus efficace dans le domaine qui compte : la prédiction du moment auquel une (dés)escalade interviendrait. Ce choix signifie que nous remettons en question l’utilité de l’utilisation de l’EQM pour évaluer les performances des modèles et nous proposons au lieu de cela des mesures de performances alternatives nécessaires pour comprendre l’utilité des modèles prédictifs. Nous soutenons que les futurs efforts utilisant ce résultat devraient plutôt mesurer leurs performances à l’aide de la Corrélation de concordance, qui prend à la fois en compte les éléments Exactitude et Précision et qui, contrairement à l’EQM, semble être robuste face aux problèmes causés par l’inflation zéro.

Suggested Citation

  • Jonas Vestby & Jürgen Brandsch & Vilde Bergstad Larsen & Peder Landsverk & Andreas Forø Tollefsen, 2022. "Predicting (de-)escalation of sub-national violence using gradient boosting: Does it work?," International Interactions, Taylor & Francis Journals, vol. 48(4), pages 841-859, July.
  • Handle: RePEc:taf:ginixx:v:48:y:2022:i:4:p:841-859
    DOI: 10.1080/03050629.2022.2021198
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    Cited by:

    1. Racek, Daniel & Thurner, Paul & Kauermann, Goeran, 2024. "Integrating Spatio-temporal Diffusion into Statistical Forecasting Models of Armed Conflict via Non-parametric Smoothing," OSF Preprints q59dr, Center for Open Science.

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