An Early Warning Model for Forced Displacement
Geraldine Henningsen

TL;DR
This paper introduces a predictive monitoring model combining conflict forecasts with economic, political, and demographic data to assess and forecast forced displacement risks with high accuracy, aiding humanitarian planning.
Contribution
It presents a novel gradient boosting classification approach that integrates diverse country-level indicators to predict displacement flows and their sudden increases.
Findings
High accuracy in predicting significant displacement flows
Good accuracy in forecasting sudden increases in displacement
Inclusion of multiple indicators improves risk assessment
Abstract
Monitoring tools for anticipatory action are increasingly gaining traction to improve the efficiency and timeliness of humanitarian responses. Whilst predictive models can now forecast conflicts with high accuracy, translating these predictions into potential forced displacement movements remains challenging because it is often unclear which precise events will trigger significant population movements. This paper presents a novel monitoring approach for refugee and asylum seeker flows that addresses this challenge. Using gradient boosting classification, we combine conflict forecasts with a comprehensive set of economic, political, and demographic variables to assess two distinct risks at the country of origin: the likelihood of significant displacement flows and the probability of sudden increases in these flows. The model generates country-specific monthly risk indices for these two…
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Taxonomy
TopicsClimate Change, Adaptation, Migration · Migration, Refugees, and Integration · Migration and Labor Dynamics
MethodsSparse Evolutionary Training
