Assessing Refugees' Integration via Spatio-temporal Similarities of Mobility and Calling Behaviors
Antonio L. Alfeo, Mario G. C. A. Cimino, Bruno Lepri, Alex 'Sandy', Pentland, Gigliola Vaglini

TL;DR
This paper introduces a novel computational method using spatiotemporal similarity analysis of mobility and calling behaviors to assess refugee integration in Turkey, providing insights into social and economic dynamics.
Contribution
It proposes a new set of metrics and a bio-inspired computational approach, Computational Stigmergy, to analyze integration through mobility and communication patterns.
Findings
Mobility and behavioral similarity correlate with local interactions.
These metrics serve as proxies for economic capacity and employment potential.
The approach detects social tensions affecting integration.
Abstract
In Turkey the increasing tension, due to the presence of 3.4 million Syrian refugees, demands the formulation of effective integration policies. Moreover, their design requires tools aimed at understanding the integration of refugees despite the complexity of this phenomenon. In this work, we propose a set of metrics aimed at providing insights and assessing the integration of Syrians refugees, by analyzing a real-world Call Details Records (CDRs) dataset including calls from refugees and locals in Turkey throughout 2017. Specifically, we exploit the similarity between refugees' and locals' spatial and temporal behaviors, in terms of communication and mobility in order to assess integration dynamics. Together with the already known methods for data analysis, we use a novel computational approach to analyze spatiotemporal patterns: Computational Stigmergy, a bio-inspired scalar and…
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