DBSCAN和CLARA聚类算法及其在土壤数据聚类中的应用

M. Vukcevic, V. Popović, E. Dervic
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引用次数: 1

摘要

本文将DBSCAN和CLARA两种聚类算法应用于黑山土壤学数据库。这两种算法都基于数据的密度分布对数据进行聚类。DBSCAN可以发现任意形状的簇,而无需领域知识。另一方面,CLARA为具有均匀间隔数据的数据库形成大小和形状大致相等的簇。所使用的数据库由土壤样品的化学参数和机械物理参数组成。不同类型土壤之间没有明显的过渡,其参数值在集群边界点上差异较大。因此,CLARA方法对土壤学数据的聚类效果较好,仿真结果也证实了这一点。CLARA得到的结果与专家对黑山土壤的分析结果具有可比性。
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DBSCAN and CLARA Clustering Algorithms and their usage for the Soil Data Clustering
In this paper two clustering algorithms DBSCAN and CLARA were applied over the pedological database of Montenegro. Both algorithms clusterize data based on their density distribution. DBSCAN enables discovering clusters of arbitary shapes, without domain knowledge. On the other hand, CLARA forms clusters of approximatly equal size and shape for databases with uniformly spaced data. The used databases is composed of chemical and mechanical-physical parameters of soil samples. There are no clear transitions between different types of soil and large differences in values of their parameters at the boundary points of the clusters. Thus, CLARA is proved to be better for clustering pedologic data, which is confirmed by means of simulations. The results obtained by the CLARA are comparable with the results obtained by the analysis of soil in Montenegro by the expert.
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