首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Advanced visualization of self-organizing maps with vector fields.
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Advanced visualization of self-organizing maps with vector fields.

机译:具有向量字段的自组织地图的高级可视化。

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摘要

Self-Organizing Maps have been applied in various industrial applications and have proven to be a valuable data mining tool. In order to fully benefit from their potential, advanced visualization techniques assist the user in analyzing and interpreting the maps. We propose two new methods for depicting the SOM based on vector fields, namely the Gradient Field and Borderline visualization techniques, to show the clustering structure at various levels of detail. We explain how this method can be used on aggregated parts of the SOM that show which factors contribute to the clustering structure, and show how to use it for finding correlations and dependencies in the underlying data. We provide examples on several artificial and real-world data sets to point out the strengths of our technique, specifically as a means to combine different types of visualizations offering effective multidimensional information visualization of SOMs.
机译:自组织地图已应用于各种工业应用中,并被证明是有价值的数据挖掘工具。为了充分利用其潜力,先进的可视化技术可帮助用户分析和解释地图。我们提出了两种基于向量场的SOM描述新方法,即梯度场和边界线可视化技术,以显示各个细节级别的聚类结构。我们将说明如何在SOM的聚合部分上使用此方法,以显示哪些因素有助于聚类结构,并说明如何使用它来查找基础数据中的相关性和依赖性。我们提供了一些关于人工和现实世界数据集的示例,以指出我们技术的优势,特别是作为一种组合不同类型的可视化的方法,从而提供有效的SOM多维信息可视化。

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