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The Novel Improved Hybrid Clustering Algorithm of Particle Swarm and K-Means Considering Applications

机译:考虑应用的粒子群和k型k-ics的新型改进的混合聚类算法

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The novel improved hybrid clustering algorithm of the particle swarm and K-Means considering applications is well studied in this paper. This research work considers each object present in the space as a particle with a certain mass, and there is a spherical symmetrical virtual data field around it. The output result of the system in this paper is closer to the true target value. The reason is that the analysis system set in this paper applies the clustering objective function, which makes up for the shortcomings of traditional systems that are easy to fall into local extreme values, slow clustering speed and poor analysis accuracy. The K-means is optimized with the particle swarm considering the data structure. The proposed method is simulated on different database.
机译:本文研究了考虑应用的粒子群和K型K-is的新型改进的杂种聚类算法。 该研究工作认为空间中存在的每个物体作为具有特定质量的粒子,并且它周围存在一个球形对称的虚拟数据字段。 本文中系统的输出结果更接近真正的目标值。 原因是本文中的分析系统采用聚类目标函数,这弥补了传统系统的缺点,易于陷入局部极值,速度慢的聚类速度和差的分析准确性。 考虑数据结构,用粒子群进行优化K-mean。 所提出的方法在不同的数据库上模拟。

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