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MIGSOM: Multilevel Interior Growing Self-Organizing Maps for High Dimensional Data Clustering

机译:MIGSOM:用于高维数据聚类的多层内部增长自组织映射

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摘要

Understanding the inherent structure of high-dimensional datasets is a very challenging task. This can be tackled from visualization, summarizing or simply clustering points of view. The Self-Organizing Map (SOM) is a powerful and unsupervised neural network to resolve these kinds of problems. By preserving the data topology mapped onto a grid, SOM can facilitate visualization of data structure. However, classical SOM still suffers from the limits of its predefined structure. Growing variants of SOM can overcome this problem, since they have tried to define a network structure with no need an advance a fixed number of output units by dynamic growing architecture. In this paper we propose a new dynamic SOMs called MIGSOM: Multilevel Interior Growing SOMs for high-dimensional data clustering. MIGSOM present a different architecture than dynamic variants presented in the literature. Using an unsupervised training process MIGSOM has the capability of growing map size from the boundaries as well as the interior of the network in order to represent more faithfully the structure present in a data collection. As a result, MIGSOM can have three-dimensional (3-D) structure with different levels of oriented maps developed according to data direction. We demonstrate the potential of the MIGSOM with real-world datasets of high-dimensional properties in terms of topology preserving visualization, vectors summarizing by efficient quantization and data clustering. In addition, MIGSOM achieves better performance compared to growing grid and the classical SOM.
机译:了解高维数据集的固有结构是一项非常艰巨的任务。这可以通过可视化,总结或简单地聚类的观点来解决。自组织映射(SOM)是一个功能强大且不受监督的神经网络,可以解决此类问题。通过保留映射到网格上的数据拓扑,SOM可以促进数据结构的可视化。但是,传统的SOM仍然受其预定义结构的限制。 SOM不断增长的变体可以克服此问题,因为它们试图通过动态增长的体系结构定义网络结构,而无需提前固定数量的输出单元。在本文中,我们提出了一种称为MIGSOM的新动态SOM:用于高维数据聚类的多层内部增长SOM。 MIGSOM提出的架构与文献中提出的动态变体不同。使用无监督的训练过程,MIGSOM具有从边界以及网络内部扩大地图大小的能力,以便更忠实地表示数据收集中存在的结构。结果,MIGSOM可以具有三维(3-D)结构,具有根据数据方向开发的不同级别的定向图。我们用拓扑结构保留可视化,通过有效量化和向量聚类进行矢量汇总的高维属性的现实世界数据集展示了MIGSOM的潜力。此外,与不断发展的网格和传统的SOM相比,MIGSOM具有更好的性能。

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