A Local Gravity Kinematics Synchronization Clustering Algorithm

Liang Yan, Zhao Dongguo, Lu Xianguo, Jie Xiaoyuan, Wang Chenglin
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Abstract

We propose a new clustering method called LGKSC, which is an alternative model based on gravitational kinematics to simulate local synchronization. The difference from existing clustering algorithms is that the algorithm makes objects over time. The dynamics of interaction are gradually synchronized dynamically, forming a local cluster corresponding to the internal structure of the data set. LGKSC can determine clusters with any shape, size and density, and can identify the amount of clusters automatically. LGKSC can adaptively identify the neighbors of the data objects based on the Davies-Bouldin (DB) index, so it can choose the best clustering results. Experiments indicate that the proposed method may take more time to run, but the algorithm have advantages in detecting the amount and the accuracy of clusters.
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局部重力运动同步聚类算法
我们提出了一种新的聚类方法,称为LGKSC,这是一种基于重力运动学模拟局部同步的替代模型。与现有聚类算法的不同之处在于,该算法随着时间的推移生成对象。交互的动态逐渐动态同步,形成与数据集内部结构相对应的局部聚类。LGKSC可以确定任何形状、大小和密度的聚类,并可以自动识别聚类的数量。LGKSC可以基于DB (Davies-Bouldin)索引自适应识别数据对象的邻居,从而选择最佳聚类结果。实验表明,该方法运行时间较长,但在聚类数量和准确率检测方面具有优势。
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