基于亲和传播算法的聚类分层聚类

Qinghe Zhang, Xiaoyun Chen
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引用次数: 2

摘要

亲和性传播(AP)算法不固定聚类的数量,也不依赖于随机抽样。它具有执行速度快、错误率低的特点。然而,很难产生最优的聚类。本文提出了一种基于AP (agAP)的聚类方法来克服这一局限性。它提出了k-聚类接近度来合并AP生成的聚类。与AP相比,agAP方法具有更好的性能,并且优于或等于AP方法的质量。与自适应亲和传播(adAP)相比,它具有时间复杂度低的优点。
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Agglomerative hierarchical clustering based on affinity propagation algorithm
Affinity propagation (AP) algorithm doesn't fix the number of the clusters and doesn't rely on random sampling. It exhibits fast execution speed with low error rate. However, it is hard to generate optimal clusters. This paper proposes an agglomerative clustering based on AP (agAP) method to overwhelm the limitation. It puts forward k-cluster closeness to merge the clusters yielded by AP. In comparison to AP, agAP method has better performance and is better than or equal to the quality of AP method. And it has an advantage of time complexity compared to adaptive affinity propagation (adAP).
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