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Visualization of Complex Datasets with the Self-Organizing Spanning Tree

机译:使用自组织生成树可视化复杂数据集

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摘要

Visualization of real world data is a difficult task due to the high-dimensional and the complex structure in real datasets. Scientific data visualization requires a variety of mathematical techniques to transform high-dimensional data sets into simple graphical objects that provide a clearer understanding. In this work a Self-Organizing Spanning Tree is proposed, which is able to learn a tree topology without any prespecified structure. Experimental results are provided to show the good performance with synthetic and real data. Moreover, the proposed self-organizing model is applied to color vector quantization, whose comparative results are provided.
机译:由于现实数据集中的高维和复杂结构,因此现实世界数据的可视化是一项艰巨的任务。科学的数据可视化需要多种数学技术才能将高维数据集转换为简单的图形对象,从而提供更清晰的理解。在这项工作中,提出了一种自组织生成树,该树能够学习没有任何预定结构的树拓扑。提供的实验结果显示了综合和真实数据的良好性能。此外,将所提出的自组织模型应用于颜色矢量量化,并提供了比较结果。

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