Substantiation of K-Means and Affinity Propagation algorithm

Preeti Arora, Deepali Virmani, Shipra Varshney
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引用次数: 4

Abstract

Our research is based is to create implementations of two common clustering algorithms K-Means and Affinity Propagation. There are certain drawbacks of K-Means however the main drawback with this and the same kind of similar algorithms is in selecting some number of clusters, and choosing the initial set of points. Affinity Propagation locates exemplars between datum or data points or series points and thus forms clusters of this datum around these exemplars. After forming the groups it operates by simultaneously considering all d atum as probable exemplars and interchange messages between data points till a good set of exemplars and clusters appears. Finally, we have finish making an Affinity Propagation program which nearly supervene the details laid out because the affinity propagation has an aptness to form many clusters. Using these two programs we slandered a variety of one and two dimensional datasets, and we examined the results to confirm that Affinity Propagation produces clustering errors in involving competition with that of K-Means in an order of enormity less time.
k -均值和亲和传播算法的证明
我们的研究是基于创建两种常见的聚类算法K-Means和Affinity Propagation的实现。K-Means有一定的缺点,但是它的主要缺点是选择一些数量的聚类,以及选择初始点集。亲和传播将样本定位在基准或数据点或序列点之间,从而在这些样本周围形成该基准的簇。在形成组后,它同时考虑所有的样本作为可能的样本,并在数据点之间交换信息,直到出现一组良好的样本和聚类。最后,我们编制了一个亲和性传播程序,由于亲和性传播具有形成多个集群的能力,因此该程序几乎可以覆盖所布置的细节。使用这两个程序,我们对各种一维和二维数据集进行了诽谤,并检查了结果,以确认亲和性传播在涉及K-Means竞争时产生聚类误差,其时间比K-Means短得多。
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