Placement Optimization in Refugee Resettlement

Narges Ahani, Tommy Andersson, Alessandro Martinello, Alexander Teytelboym , Andrew C. Trapp

Research output: Contribution to journalArticlepeer-review

Abstract

Every year, tens of thousands of refugees are resettled to dozens of host countries. Although there is growing evidence that the initial placement of refugee families profoundly affects their lifetime outcomes, there have been few attempts to optimize resettlement decisions. We integrate machine learning and integer optimization into an innovative software tool, Annie™ Matching and Outcome Optimization for Refugee Empowerment (Annie™ Moore), that assists a U.S. resettlement agency with matching refugees to their initial placements. Our software suggests optimal placements while giving substantial autonomy to the resettlement staff to fine-tune recommended matches, thereby streamlining their resettlement operations. Initial back testing indicates that Annie™ can improve short-run employment outcomes by 22%–38%. We conclude by discussing several directions for future work.
Original languageEnglish
Pages (from-to)1468-1486
JournalOperations Research
Volume69
Issue number5
Early online date2021 Mar 24
DOIs
Publication statusPublished - 2021

Subject classification (UKÄ)

  • Economics

Free keywords

  • refugee resettlement
  • matching
  • integer optimization
  • machine learning
  • humanitarian operations

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