Proposing Location-based Predictive Features for Modeling Refugee Counts
Proposing Location-based Predictive Features for Modeling Refugee Counts
Author(s): Esther Ledelle Mead, Maryam Maleki, Mohammad Arani, Nitin AgarwalSubject(s): Migration Studies, ICT Information and Communications Technologies, Asylum, Refugees, Migration as Policy-fields
Published by: Transnational Press London
Keywords: Data Science; Machine Learning; Predictive Modeling; Refugee Crisis;
Summary/Abstract: Machine learning models to predict refugee crisis situations are still lacking. The model proposed in this work uses a set of predictive features that are indicative of the sociocultural, socioeconomic, and economic characteristics that exist within each country and region. Twenty-eight features were collected for specific countries and years. The feature set was tested in experiments using ordinary least squares regression based on regional subsets. Potential location-based features stood out in our results, such as the global peace index, access to electricity, access to basic water, media censorship, and healthcare. The model performed best for the region of Europe, wherein the features with the most predictive power included access to justice and homicide rate. Corruption features stood out in both Africa and Asia, while population features were dominant in the Americas. Model performance metrics are provided for each experiment. Limitations of this dataset are discussed, as are steps for future work.
Journal: Transnational Education Review
- Issue Year: 1/2023
- Issue No: 1
- Page Range: 3-16
- Page Count: 14
- Language: English