用于数据分析的自组织地图

S. Delgado, C. Gonzalo, E. Martínez, A. Arquero
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引用次数: 1

摘要

目前,为了提取有用的信息,存在许多研究领域产生大量难以可视化的多变量数据集。Kohonen自组织图已经成功地应用于多维数据的可视化和分析。在这项工作中,描述了一种使用增长自组织映射将多维数据集压缩到二维空间的投影技术。利用该嵌入方案,利用生长细胞结构网络实现了传统的Kohonen可视化方法。使用两组模拟数据和一组从卫星场景中选择的真实多维数据,将新的图形地图显示与Kohonen图进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Growing Self-Organizing Maps for Data Analysis
Currently, there exist many research areas that produce large multivariable datasets that are difficult to visualize in order to extract useful information. Kohonen self organizing maps have been used successfully in the visualization and analysis of multidimensional data. In this work, a projection technique that compresses multidimensional datasets into two dimensional space using growing self-organizing maps is described. With this embedding scheme, traditional Kohonen visualization methods have been implemented using growing cell structures networks. New graphical map display have been compared with Kohonen graphs using two groups of simulated data and one group of real multidimensional data selected from a satellite scene.
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