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A Novel Path-Based Clustering Algorithm Using Multi-dimensional Scaling

机译:一种使用多维缩放的新型路径基簇算法

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Data clustering is a difficult and challenging task, especially when the hidden clusters are of different shapes and non-linearly separable in the input space. This paper addresses this problem by proposing a new method that combines a path-based dissimilarity measure and multi-dimensional scaling to effectively identify these complex separable structures. We show that our algorithm is able to identify clearly separable clusters of any shape or structure. Thus showing that our algorithm produces model clusters; that follow the definition of a cluster.
机译:数据聚类是一个困难且具有挑战性的任务,尤其是当隐藏的群集在不同的形状和输入空间中不可线性可分离时。本文通过提出结合基于路径的不同度量和多维缩放来有效识别这些复杂可分离结构的新方法来解决该问题。我们表明我们的算法能够识别任何形状或结构的清晰可分离的簇。从而表明我们的算法产生模型集群;遵循群集的定义。

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