多维数据的自适应空间聚类及其云模型表示

Bin Gao, Xinhai Zhang, Xiaobin Xu, Yifeng Liu
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引用次数: 1

摘要

针对需要手动设置聚类个数的问题,难以对多维数据进行有效的处理,在对多维数据进行聚类时,聚类结果不能得到有效的描述。提出了一种多维数据的自适应空间聚类及其云模型表示方法。该方法可以对多维空间数据进行聚类,对聚类结果形成定性描述,实现定性描述特征的重构与验证。通过仿真实验,该方法可以在不需要设置聚类个数的情况下自适应聚类数据。同时,它具有较好的数字特征抽象和重构能力。
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Adaptive Spatial Clustering for Multi-Dimensional Data and Its Cloud Model Representation
In view of the problem that the number of clusters need to be set manually, it is difficult to process the multi-dimensional data effectively, and the clustering results are not described effectively when the multi-dimensional data need to be clustered. This paper proposes a method of adaptive spatial clustering and its cloud model representation for the multi-dimensional data. This method can be used to cluster multi-dimensional spatial data, form qualitative description of clustering results, and realize the reconstruction and verification of qualitative description features. Through simulation experiments, this method can cluster data adaptively without the need to set the number of clusters. At the same time, it has a good ability to abstract and reconstruct digital features.
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