首页> 外文会议>SPIE Conference on Visualization and Data Analysis >Techniques for Precision-Based Visual Analysis of Projected Data
【24h】

Techniques for Precision-Based Visual Analysis of Projected Data

机译:基于精度的预计数据视觉分析技术

获取原文

摘要

The analysis of high-dimensional data is an important, yet inherently difficult problem. Projection techniques such as PCA, MDS, and SOM can be used to map high-dimensional data to 2D display space. However, projections typically incur a loss in information. Often uncertainty exists regarding the precision of the projection as compared with its original data characteristics. While the output quality of these projection techniques can be discussed in terms of algorithmic assessment, visualization is often helpful for better understanding the results. We address the visual assessment of projection precision by an approach integrating an appropriately designed projection precision measure directly into the projection visualization. To this end, a flexible projection precision measure is defined that allows the user to balance the degree of locality at which the measure is evaluated. Several visual mappings are designed for integrating the precision measure into the projection visualization at various levels of abstraction. The techniques are implemented in a fully interactive system which is practically applied on several data sets. We demonstrate the usefulness of the approach for visual analysis of classified and clustered highdimensional data sets. We thereby show how our novel interactive precision quality visualization system helps to examine preservation of closeness of the data in original space into the low-dimensional space.
机译:分析高维数据是一个重要的,但本质上难题。投影技术(如PCA,MDS和SOM)可用于将高维数据映射到2D显示空间。但是,预测通常会产生信息损失。与原始数据特性相比,通常存在关于投影的精度的不确定性。虽然可以在算法评估方面讨论这些投影技术的输出质量,但可视化通常有助于更好地理解结果。我们通过将适当设计的投影精度测量直接进入投影可视化的方法来解决投影精度的视觉评估。为此,定义灵活投影精度测量,允许用户平衡评估测量的位置程度。若干视觉映射被设计用于将精度测量集成到各种抽象层中的投影可视化中。该技术在完全交互式系统中实现,该系统实际上应用于若干数据集。我们展示了对分类和聚类高度数据集的视觉分析方法的有用性。因此,我们展示了我们的新型交互式精密质量可视化系统如何帮助检查原始空间中数据的近距离的保存到低维空间。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号