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On Strategies to Fix Degenerate k-means Solutions

机译:关于修复稀土元化解决方案的策略

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摘要

k-means is a benchmark algorithm used in cluster analysis. It belongs to the large category of heuristics based on location-allocation steps that alternately locate cluster centers and allocate data points to them until no further improvement is possible. Such heuristics are known to suffer from a phenomenon called degeneracy in which some of the clusters are empty. In this paper, we compare and propose a series of strategies to circumvent degenerate solutions during a k-means execution. Our computational experiments show that these strategies are effective, leading to better clustering solutions in the vast majority of the cases in which degeneracy appears in k-means. Moreover, we compare the use of our fixing strategies within k-means against the use of two initialization methods found in the literature. These results demonstrate how useful the proposed strategies can be, specially inside memorybased clustering algorithms.
机译:K-means是集群分析中使用的基准算法。 它属于基于位置分配步骤的大类启发式机器,交替地定位集群中心并将数据点分配给它们,直到不进一步改进。 已知这种启发式患有称为退化性的现象,其中一些簇是空的。 在本文中,我们比较并提出了一系列策略在K-Meanse执行期间对句子堕落的解决方案进行了规避。 我们的计算实验表明,这些策略是有效的,导致绝大多数案例中更好的聚类解决方案,其中退化以K-means出现。 此外,我们将在K-Means中的定位策略进行比较,以防止在文献中发现的两种初始化方法。 这些结果表明,拟议的策略可以是多么有用,特别是在存储基础的聚类算法内。

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