Outcome-Driven Dynamic Refugee Assignment with Allocation Balancing
- URL: http://arxiv.org/abs/2007.03069v4
- Date: Thu, 13 Jan 2022 00:31:34 GMT
- Title: Outcome-Driven Dynamic Refugee Assignment with Allocation Balancing
- Authors: Kirk Bansak, Elisabeth Paulson
- Abstract summary: We propose two new dynamic assignment algorithms to match refugees and asylum seekers to geographic localities within a host country.
The first seeks to maximize the average predicted employment level (or any measured outcome of interest) of refugees through a minimum-discord online assignment algorithm.
The second algorithm balances the goal of improving refugee outcomes with the desire for an even allocation over time.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This study proposes two new dynamic assignment algorithms to match refugees
and asylum seekers to geographic localities within a host country. The first,
currently implemented in a multi-year pilot in Switzerland, seeks to maximize
the average predicted employment level (or any measured outcome of interest) of
refugees through a minimum-discord online assignment algorithm. Although the
proposed algorithm achieves near-optimal expected employment compared to the
hindsight-optimal solution (and improves upon the status quo procedure by about
40%), it results in a periodically imbalanced allocation to the localities over
time. This leads to undesirable workload inefficiencies for resettlement
resources and agents. To address this problem, the second algorithm balances
the goal of improving refugee outcomes with the desire for an even allocation
over time. The performance of the proposed methods is illustrated using real
refugee resettlement data from a large resettlement agency in the United
States. On this dataset, we find that the allocation balancing algorithm can
achieve near-perfect balance over time with only a small loss in expected
employment compared to the pure employment-maximizing algorithm. In addition,
the allocation balancing algorithm offers a number of ancillary benefits
compared to pure outcome-maximization, including robustness to unknown arrival
flows and greater exploration.
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