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An Improved Integrated Clustering Learning Strategy Based on Three-Stage Affinity Propagation Algorithm with Density Peak Optimization Theory

机译:基于三阶段亲和力传播算法的改进的集成聚类学习策略,密度峰优化理论

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To better reflect the precise clustering results of the data samples with different shapes and densities for affinity propagation clustering algorithm (AP), an improved integrated clustering learning strategy based on three-stage affinity propagation algorithm with density peak optimization theory (DPKT-AP) was proposed in this paper. DPKT-AP combined the ideology of integrated clustering with the AP algorithm, by introducing the density peak theory and k-means algorithm to carry on the three-stage clustering process. In the first stage, the clustering center point was selected by density peak clustering. Because the clustering center was surrounded by the nearest neighbor point with lower local density and had a relatively large distance from other points with higher density, it could help the k-means algorithm in the second stage avoiding the local optimal situation. In the second stage, the k-means algorithm was used to cluster the data samples to form several relatively small spherical subgroups, and each of subgroups had a local density maximum point, which is called the center point of the subgroup. In the third stage, DPKT-AP used the AP algorithm to merge and cluster the spherical subgroups. Experiments on UCI data sets and synthetic data sets showed that DPKT-AP improved the clustering performance and accuracy for the algorithm.
机译:为了更好地反映具有不同形状和密度的数据采样的精确聚类结果,以及用于关联传播聚类算法(AP)的密度,基于具有密度峰值优化理论(DPKT-AP)的三阶段亲和力传播算法的改进的集成聚类学习策略本文提出。 DPKT-AP通过引入密度峰值理论和K型算法进行三级聚类过程,将集成聚类的意识形态组合在一起。在第一阶段,通过密度峰聚类选择聚类中心点。因为聚类中心被最近的邻点包围,所以局部密度较低,并且与具有较高密度的其他点具有相对较大的距离,它可以帮助k-mean算法在第二阶段避免局部最佳情况。在第二阶段,K-Means算法用于聚类数据样本以形成几个相对小的球形子组,并且每个子组具有局部密度最大点,其称为子组的中心点。在第三阶段,DPKT-AP使用了AP算法来合并和聚类球形子组。 UCI数据集和合成数据集的实验表明,DPKT-AP改进了算法的聚类性能和准确性。

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