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K-means initial clustering center optimal algorithm based on estimating density and refining initial

机译:基于密度估计和初始细化的K均值初始聚类中心优化算法

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摘要

The performance of K-means clustering algorithm strongly depends on the initial parameters. Based on the segmenting algorithm of density estimation and large scale data group segmenting algorithm of the initial value limitation, a new algorithm for initializing the cluster center is presented. The idea of segmenting base on density is combined with the idea of sampling and the new idea is presented. The accuracy of sampling is improved by averagely segmenting every dimension of the database. The speediness of the refining initial algorithm ensures the new algorithm has superiority on time. The experiment demonstrates that the new algorithm has superiority on time and accuracy with other algorithms.
机译:K-均值聚类算法的性能很大程度上取决于初始参数。基于密度估计的分割算法和初始值限制的大规模数据组分割算法,提出了一种初始化聚类中心的新算法。将基于密度的分割思想与采样思想相结合,提出了新的思想。通过平均细分数据库的每个维度,可以提高采样的准确性。提炼初始算法的快速性确保了新算法在时间上具有优越性。实验表明,新算法在时间和准确性上均优于其他算法。

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