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Noise clustering algorithm revisited

机译:再谈噪声聚类算法

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Dave's (1991) noise clustering (NC) algorithm is revisited. In the original NC algorithm, the distance of a noise prototype from all the points was defined to be a constant value /spl delta/. While this idea works well in detecting a variety of cluster shapes in noisy data, use of the same constant value of /spl delta/ makes NC somewhat limited in its scope. The authors allow S to take different values for different feature vectors, and find interesting results due to this modification. It is shown that the membership generated by NC algorithm is a product of two terms, one is the original fuzzy c-means (FCM) membership responsible for data partitioning, and the other is a robust M-estimator type weight (or like a generalized possibilistic membership) that achieves a mode seeking effect, and imparts robustness. In this light, it is shown that the NC technique is a generalization of the possibilistic clustering technique. An interesting fact about the robust component of the NC membership is regarding the appearance of term related to the harmonic mean distance of a point from all the classes. The role of this term is discussed along with other possible generalizations, including one that makes the generalized NC a fuzzy c-class extension of robust M-estimators.
机译:戴夫(1991)噪声聚类(NC)算法被重新审视。在原始的NC算法中,将噪声原型到所有点的距离定义为恒定值/ spl delta /。尽管此想法在检测嘈杂数据中的各种簇形状时效果很好,但使用相同的/ spl delta /常数值会使NC的范围受到一定程度的限制。作者允许S对不同的特征向量采用不同的值,并由于此修改而找到有趣的结果。结果表明,NC算法生成的隶属度是两个项的乘积,一个是负责数据划分的原始模糊c均值(FCM)隶属度,另一个是鲁棒的M估计量类型权重(或类似于广义可能的成员资格),可以实现寻模效果并赋予鲁棒性。因此,可以看出NC技术是对可能聚类技术的概括。关于NC隶属度的鲁棒性的一个有趣事实是,与所有类的点的谐波平均距离相关的项的出现。与其他可能的概括一起讨论了该术语的作用,包括使广义NC成为鲁棒M估计量的模糊c类扩展的一个。

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