一种基于层次和密度的空间流聚类方法

Ran Tao, J. Thill, C. Depken, M. Kashiha
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引用次数: 10

摘要

了解空间始发-目的地流数据的模式和动态一直是空间科学家的长期目标。本研究旨在开发一种新的流聚类方法,称为flowHDBSCAN,该方法具有应用于各种城市动力学问题的潜力,如空间运动分析和智能交通系统。流需要源和目标对,而不包括中间的实际路径。该方法结合了基于密度的聚类方法和层次聚类方法,并将它们扩展到空间流的环境中。它不仅可以从不同的流密度、长度、方向和层次中提取流簇,而且还提供了一种有效的方法来揭示流簇潜在的分层数据结构。常见的问题,如流量端点的可修改面积单位问题(MAUP),短流的假阳性错误,以及空间信息的丢失都得到了很好的处理。此外,单参数设计保证了其易用性和实用性。实验在美国的一个合成数据集和一个eBay在线贸易流数据集上进行
本文章由计算机程序翻译,如有差异,请以英文原文为准。
flowHDBSCAN: A Hierarchical and Density-Based Spatial Flow Clustering Method
Understanding the patterns and dynamics of spatial origin-destination flow data has been a long-standing goal of spatial scientists. This study aims at developing a new flow clustering method called flowHDBSCAN, which has the potential to be applied to various urban dynamics issues such as spatial movement analysis and intelligent transportation systems. Flows entail origin and destinations pairs, at the exclusion of the actual path in-between. The method combines density-based clustering and hierarchical clustering approaches and extends them to the context of spatial flows. Not only can it extract flow clusters from various situations including varying flow densities, lengths, directions, and hierarchies, but it also provides an effective way to reveal the potentially hierarchical data structure of the clusters. Common issues such as the modifiable areal unit problem (MAUP) of flow endpoints, false positive errors on short flows, and loss of spatial information are well handled. Moreover, the sole-parameter design guarantees its ease of use and practicality. Experiments are conducted with both a synthetic dataset and an eBay online trade flow dataset in the contiguous U.S.
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