用于空间集群的可扩展工具

Venny Larasati Ayudiani, Saiful Akbar
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引用次数: 1

摘要

空间聚类是对空间对象进行聚类处理,将相似度较高的对象聚在一起。它以各种途径和方法被应用于许多领域。一些能够进行空间聚类分析的工具和库已经被开发出来。然而,这些工具通常只实现特定的方法。在本文中,我们提出了一个用户友好的分析工具,可以方便各种途径和方法进行空间聚类分析。此外,我们还考虑了分析工具的可扩展性因素,这使得新算法可以进行集成。
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An extensible tool for spatial clustering
Spatial clustering dealt with the clustering of spatial objects so that the objects with higher similarity is grouped together in a cluster. It has been applied among numerous fields with various approaches and methods. Some tools and libraries capable of doing spatial clustering analysis have been developed. However, those tools typically only implement a specific approach. In this paper, we propose a user-friendly analysis tool that can facilitate various approaches and methods to conduct spatial clustering analysis. Moreover, we take into account the extensibility factor of the analysis tool which allows integration of new algorithms to be done.
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