邻近约束层次聚类的贪婪优化

Diansheng Guo
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引用次数: 14

摘要

在大型空间数据集中发现和构建固有区域是气候区划、生态区域分析、公共卫生制图和政治区划等许多研究领域的重要任务。从聚类分析的角度来看,它要求每个聚类在地理上是连续的。提出了一种基于连续约束的分层聚类优化方法,该方法可以在优化目标函数的同时,将一组空间对象划分为连续区域的层次结构。该方法包括两个步骤:连续约束的分层聚类和双向微调。重复上述两个步骤以创建区域层次结构。评价和比较表明,该方法在优化目标函数方面始终显著优于现有方法。此外,该方法可以灵活地适应不同的目标函数和附加约束(如每个区域的最小尺寸),这对于各种应用领域都是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Greedy Optimization for Contiguity-Constrained Hierarchical Clustering
The discovery and construction of inherent regions in large spatial datasets is an important task for many research domains such as climate zoning, eco-region analysis, public health mapping, and political redistricting. From the perspective of cluster analysis, it requires that each cluster is geographically contiguous. This paper presents a contiguity constrained hierarchical clustering and optimization method that can partition a set of spatial objects into a hierarchy of contiguous regions while optimizing an objective function. The method consists of two steps: contiguity constrained hierarchical clustering and two-way fine-tuning. The above two steps are repeated to create a hierarchy of regions. Evaluations and comparison show that the proposed method consistently and significantly outperforms existing methods by a large margin in terms of optimizing the objective function. Moreover, the method is flexible to accommodate different objective functions and additional constraints (such as the minimum size of each region), which are useful to for various application domains.
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