Loan T. T. Nguyen, Trang T. D. Nguyen, Quang-Thinh Bui, Bay Vo
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引用次数: 0
摘要
地理空间数据通过整合空间和时间维度,促进高级可视化和全面分析见解,增强了传统数据集。地理空间数据聚类作为地理空间分析的一个基础方面,在理论探索和应用领域中发挥着重要作用,已成为一个重要的学术研究领域。GDC寻求基于内在相似性对地理空间对象进行分组,这是现代数据集日益增长的规模和复杂性,特别是地理信息系统(GIS)中的数据集所驱动的必要条件。本文重点介绍了GDC的主要挑战和进展,包括空间数据聚类(SDC)、GIS中的聚类技术以及为网络空间中的地理空间数据聚类设计的算法(GDC in NS)。这些方法的实际应用包括热点分析、传染病监测、交通优化、城市交通管理和应急响应规划等多种应用。这些贡献是推进学术研究和解决该领域特定领域挑战的基础。
Geospatial Data Clustering in Network Space: A Survey
Geospatial data enhances traditional datasets by integrating spatial and temporal dimensions, facilitating advanced visualizations and comprehensive analytical insights. As a fundamental aspect of geospatial analytics, geospatial data clustering (GDC) has become a prominent area of academic research, playing a critical role in theoretical exploration and applied domains. GDC seeks to group geospatial objects based on inherent similarities, a necessity driven by modern datasets' increasing scale and complexity, particularly those within geographic information systems (GIS). This paper highlights key challenges and advancements in GDC, including spatial data clustering (SDC), clustering techniques within GIS, and algorithms designed for geospatial data clustering in network spaces (GDC in NS). Practical implementations of these methodologies encompass diverse applications such as hotspot analysis, infectious disease monitoring, transportation optimization, urban traffic management, and emergency response planning. These contributions are foundational for advancing scholarly research and addressing domain-specific challenges in this field.