Incorporating domain knowledge into Memetic Algorithms for solving Spatial Optimization problems

Subhodip Biswas, Fanglan Chen, Zhiqian Chen, Chang-Tien Lu, Naren Ramakrishnan
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引用次数: 10

Abstract

Spatial optimization problems (SOPs) are characterized by spatial relationships governing the decision variables, objectives and/or constraint functions. These are mostly combinatorial problems (NP-hard) due to the presence of discrete spatial units. Hence, exact optimization methods cannot solve them optimally under practical time constraints, especially for large-sized instances. Motivated by this challenge, we explore the use of population-based metaheuristics for solving SOPs. To this end, we observe that the search moves employed by these methods are suited to real-parameter continuous search space rather. To adapt them to the SOPs, we explore the role of domain knowledge in designing spatially-aware search operators that can efficiently search for an optimal solution in discrete search space while respecting the spatial constraints. These modifications result in a simple yet highly effective spatial hybrid metaheuristic called SPATIAL, which is applied to the problem of school boundary formation (also called school redistricting). Experimental findings on real-world datasets reveal the efficacy of our algorithm in obtaining superior quality solutions in comparison to traditional baseline methods. Additionally, we perform an in-depth study of the individual components of our framework and highlight the flexibility of our method in assimilating other search operators as well as in adapting it to related SOPs.
将领域知识融入模因算法求解空间优化问题
空间优化问题(SOPs)以控制决策变量、目标和/或约束函数的空间关系为特征。由于离散空间单元的存在,这些大多是组合问题(NP-hard)。因此,在实际的时间约束下,精确的优化方法无法最优地求解这些问题,特别是对于大型实例。在这一挑战的激励下,我们探索了使用基于人群的元启发式来解决标准操作程序。为此,我们观察到这些方法所采用的搜索动作更适合于实参数连续搜索空间。为了使它们适应标准操作程序,我们探索了领域知识在设计空间感知搜索算子中的作用,该搜索算子可以在尊重空间约束的情况下在离散搜索空间中有效地搜索最优解。这些修改产生了一个简单而高效的空间混合元启发式,称为空间,它被应用于学校边界形成问题(也称为学校重新划分)。在真实数据集上的实验结果表明,与传统的基线方法相比,我们的算法在获得更高质量的解决方案方面的有效性。此外,我们对框架的各个组件进行了深入的研究,并强调了我们的方法在吸收其他搜索操作符以及使其适应相关标准操作程序方面的灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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