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RadViz extensions with applications.

机译:RadViz扩展与应用程序。

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摘要

RadViz (RV), a visualization tool developed at the Institute for Visualization and Perception Research at the University of Massachusetts Lowell, has proved to be very useful in a wide variety of applications. It has also been incorporated internationally into several generalized visualization systems. This research represents efforts to extend the ability of RV to visualize complex datasets. RV has the particular capability of being able to effectively display high dimensional datasets. This research has made use of this property by developing Vectorized RadViz (VRV). VRV provides the capability to enhance the power of RV by creating dimensional anchors assigned to individual values coming from each of the dimensions in the dataset. This tends to significantly increase the number of dimensions to be displayed, again, harnessing RV's strength to display high dimensional datasets. Repositioning these dimensional anchors expands the ability of RV to expose underlying characteristics of the dataset. This research shows how VRV can be applied to cluster ensembles and decision trees and how RV can display fuzzy clusters. Using the extent to which each record is a member of each cluster of the fuzzy cluster set RV is able to display their relationships. Fuzzy clusters were also compared to cluster ensembles using VRV. The basic features of each of the visualizations in this research were illustrated using the Iris dataset but also applied to larger scale microarray datasets.;Note: Much of this research has already been published in references (1) and (2).
机译:RadViz(RV)是马萨诸塞州洛厄尔大学可视化与感知研究所开发的可视化工具,已被证明在多种应用中非常有用。它也已在国际范围内合并到多个通用可视化系统中。这项研究代表着努力扩大RV可视化复杂数据集的能力。 RV具有能够有效显示高维数据集的特殊功能。本研究通过开发矢量化RadViz(VRV)来利用此属性。 VRV通过创建分配给来自数据集中每个维度的单个值的维度锚点来提供增强RV功能的功能。这往往会显着增加要显示的维数,再次利用RV的优势来显示高维数据集。重新定位这些尺寸锚点可以扩展RV显示数据集潜在特征的能力。这项研究表明VRV如何应用于聚类集成和决策树,以及RV如何显示模糊聚类。利用每个记录是模糊聚类集RV的每个聚类成员的程度,RV可以显示它们的关系。还使用VRV将模糊聚类与聚类集成进行了比较。使用Iris数据集说明了本研究中每种可视化的基本特征,但这些特征也适用于大规模微阵列数据集。注意:本研究的许多内容已发表在参考文献(1)和(2)中。

著录项

  • 作者

    Sharko, John.;

  • 作者单位

    University of Massachusetts Lowell.;

  • 授予单位 University of Massachusetts Lowell.;
  • 学科 Computer Science.
  • 学位 Sc.D.
  • 年度 2009
  • 页码 106 p.
  • 总页数 106
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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