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DAPPFC: Density-Based Affinity Propagation for Parameter Free Clustering

机译:DAPPFC:用于无参数聚类的基于密度的亲和力传播

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In the clustering algorithms, it is a bottleneck to identify clusters with arbitrarily. In this paper, a new method DAPPFC (density-based affinity propagation for parameter free clustering) is proposed. Firstly, it obtains a group of normalized density from the unsupervised clustering results. Then, the density is used for density clustering for multiple times. Finally, the multiple-density clustering results undergo a two-stage synthesis to achieve the final clustering result. The experiment shows that the proposed method does not require the user's intervention, and it can also get an accurate clustering result in the presence of arbitrarily shaped clusters with a minimal additional computation cost.
机译:在聚类算法中,任意识别聚类是一个瓶颈。本文提出了一种新的方法DAPPFC(无参数聚类的基于密度的亲和力传播)。首先,它从无监督聚类结果中获得一组归一化密度。然后,将密度多次用于密度聚类。最后,将多密度聚类结果进行两阶段综合,以获得最终的聚类结果。实验表明,该方法不需要用户的干预,在任意形状的聚类存在的情况下,也能以最小的额外计算成本获得准确的聚类结果。

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