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Identifying Regions Based on Flexible User Defined Constraints

机译:基于灵活的用户定义约束条件识别区域

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摘要

The identification of regions is both a computational and conceptual challenge. Even with growing computational power, regionalization algorithms must rely on heuristic approaches in order to find solutions. Therefore, the constraints and evaluation criteria that define a region must be translated into an algorithm that can efficiently and effectively navigate the solution space to find the best solution. One limitation of many existing regionalization algorithms is a requirement that the number of regions be selected a priori. The max-p algorithm, introduced in , does not have this requirement, and thus the number of regions is an output of, not an input to, the algorithm. In this paper we extend the max-p algorithm to allow for greater flexibility in the constraints available to define a feasible region, placing the focus squarely on the multidimensional characteristics of region. We also modify technical aspects of the algorithm to provide greater flexibility in its ability to search the solution space. Using synthetic spatial and attribute data we are able to show the algorithm's broad ability to identify regions in maps of varying complexity. We also conduct a large scale computational experiment to identify parameter settings that result in the greatest solution accuracy under various scenarios. The rules of thumb identified from the experiment produce maps that correctly assign areas to their “true” region with 94% average accuracy, with nearly 50 percent of the simulations reaching 100 percent accuracy.
机译:区域识别既是计算上的挑战,也是概念上的挑战。即使计算能力不断提高,区域化算法也必须依靠启发式方法才能找到解决方案。因此,必须将定义区域的约束条件和评估标准转换为可以有效地导航解决方案空间以找到最佳解决方案的算法。许多现有区域化算法的局限性是要求先验选择区域数量。引入的max-p算法没有此要求,因此区域数是该算法的输出,而不是该算法的输入。在本文中,我们扩展了max-p算法,以便在可用于定义可行区域的约束中提供更大的灵活性,将焦点直接放在区域的多维特征上。我们还修改了算法的技术方面,以提供更大的灵活性来搜索解决方案空间。使用合成的空间和属性数据,我们能够展示该算法在识别复杂程度不同的地图中的区域方面的广泛能力。我们还进行了大规模的计算实验,以识别可在各种情况下提供最大解决方案精度的参数设置。从实验中确定的经验法则可以生成将地图正确分配给其“真实”区域的图,平均准确度为94%,其中近50%的模拟达到100%的准确度。

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