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CIP and MIQP Models for the Load Balancing Nurse-to-Patient Assignment Problem

机译:负载均衡护士到患者分配问题的CIP和MIQP模型

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The load balancing nurse-to-patient assignment problem requires the assignment of nurses to patients to minimize the variance of the nurses' workload. This challenging benchmark is currently best solved exactly with constraint programming (CP) using the SPREAD constraint and a problem-specific heuristic. We show that while the problem is naturally modelled as a mixed integer quadratic programming (MIQP) problem, the MIQP does not match the performance of CP. We then develop several constraint integer programming (CIP) models that include bounds propagation, linear relaxations, and cutting planes associated with the quadratic, GCC, and SPREAD global constraints. While the QUADRATIC and GCC techniques are known, our additions to the SPREAD constraint are novel. Our empirical results demonstrate that the CIP approach substantially out-performs the MIQP model, but still lags behind CP. Finally, we propose a simple problem-specific variable ordering heuristic which greatly improves the CIP models, achieving performance about an order of magnitude faster than CP and establishing a new state of the art.
机译:负载均衡的护士到患者分配问题要求护士分配给患者,以最大程度地减少护士工作量的差异。目前,使用SPREAD约束和特定于问题的启发式方法,通过约束编程(CP)可以最好地解决这个具有挑战性的基准。我们显示,虽然问题自然被建模为混合整数二次规划(MIQP)问题,但MIQP与CP的性能不匹配。然后,我们开发几个约束整数编程(CIP)模型,其中包括边界传播,线性松弛和与二次,GCC和SPREAD全局约束关联的切割平面。虽然知道QUADRATIC和GCC技术,但是我们对SPREAD约束的添加是新颖的。我们的经验结果表明,CIP方法的性能明显优于MIQP模型,但仍落后于CP。最后,我们提出了一个简单的针对特定问题的变量排序启发式方法,该方法极大地改善了CIP模型,实现了比CP快约一个数量级的性能,并建立了新的技术水平。

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