Employment outcomes of resettled refugees depend strongly on where they are placed inside the host country. Each week, a resettlement agency is assigned a batch of refugees by the United States government. The agency must place these refugees in its local affiliates, while respecting the affiliates' yearly capacities. We develop an allocation system that suggests where to place an incoming refugee, in order to improve total employment success. Our algorithm is based on two-stage stochastic programming and achieves over 98 percent of the hindsight-optimal employment, compared to under 90 percent of current greedy-like approaches. This dramatic improvement persists even when we incorporate a vast array of practical features of the refugee resettlement process including indivisible families, batching, and uncertainty with respect to the number of future arrivals. Our algorithm is now part of the Annie MOORE optimization software used by a leading American refugee resettlement agency.
翻译:重新定居难民的就业结果在很大程度上取决于他们安置在东道国境内的地点。每周,美国政府都会指派一批难民安置机构。该机构必须将这些难民安置在当地的附属公司,同时尊重附属公司每年的能力。我们开发了一个分配制度,建议将一个即将抵达的难民安置在什么地方,以提高整个就业的成功率。我们的算法基于两个阶段的随机程序,实现了后视最佳就业的98%以上,而目前类似贪婪做法的90%以下。这一巨大改进仍然存在,即使我们纳入了难民重新安置进程的广泛实际特点,包括不可分割的家庭、分批和今后抵达人数的不确定性。我们的算法现在是一个主要美国难民安置机构使用的Annie MOORE优化软件的一部分。