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kappa*-Means -- A Generalized kappa-Means Clustering Algorithm with Unknown Cluster Number

机译:kappa * -means - 具有未知群集号的通用kappa-means聚类算法

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This paper presents a new clustering technique named STep-wise Automatic Rival-penalized (STAR) kappa-means algorithm (denoted as kappa*-means), which is actually a generalized version of the conventional k-means (MacQueen 1967). Not only is this new algorithm applicable to ellipse-shaped data clusters rather than just to ball-shaped ones like the k-means algorithm, but also it can perform appropriate clustering without knowing cluster number by gradually penalizing the winning chance of those extra seed points during learning competition. Although the existing RPCL (Xu et al. 1993) can automatically select the cluster number as well by driving extra seed points far away from the input data set, its performance is much sensitive to the selection of the de-learning rate. To our best knowledge, there is still no theoretical result to guide its selection as yet. In contrast, the proposed kappa*-means algorithm need not determine this rate. We have qualitatively analyzed its rival-penalized mechanism with the results well-justified by the experiments.
机译:本文介绍了一个名为STAP-WISE自动竞争(Star)KAPPA-MEAL算法的新集群技术(表示为Kappa * -means),其实际上是传统K-means的广义版本(MacQueen 1967)。这种新算法不仅适用于椭圆形数据集群,而不是仅仅与K-means算法相似的球形数据,还可以通过逐步惩罚那些额外种子点的获胜机会,在不知道群集号码的情况下执行适当的聚类在学习竞争期间。虽然现有的RPCL(XU等人1993)也可以通过驾驶额外的种子点远离输入数据集的额外种子点来自动选择群集号,但其性能对选择去学习率的选择非常敏感。为了我们的最佳知识,仍然没有理论效果来指导其选择。相比之下,提出的kappa * -means算法无需确定此速率。我们定性地分析了其竞争对手惩罚机制,结果通过实验完全合理。

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