Forecasting asylum-related migration flows with machine learning and data at scale
Marcello Carammia, Stefano Maria Iacus, Teddy Wilkin

TL;DR
This paper demonstrates that adaptive machine learning models integrating diverse data sources can accurately forecast asylum-related migration flows in the EU up to four weeks in advance, addressing previous forecasting limitations.
Contribution
It introduces a scalable, data-driven forecasting approach that combines official statistics, geolocated events, internet searches, and border detections to improve migration predictions.
Findings
Effective four-week ahead forecasts of asylum applications
Early detection of migration drivers through monitoring
Modeling of individual country-to-country flows
Abstract
The effects of the so-called "refugee crisis" of 2015-16 continue to dominate the political agenda in Europe. Migration flows were sudden and unexpected, leaving governments unprepared and exposing significant shortcomings in the field of migration forecasting. Migration is a complex system typified by episodic variation, underpinned by causal factors that are interacting, highly context dependent and short-lived. Correspondingly, migration monitoring relies on scattered data, while approaches to forecasting focus on specific migration flows and often have inconsistent results that are difficult to generalise at the regional or global levels. Here we show that adaptive machine learning algorithms that integrate official statistics and non-traditional data sources at scale can effectively forecast asylum-related migration flows. We focus on asylum applications lodged in countries of…
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