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Information visualization design for multidimensional data: Integrating the rank-by-feature framework with hierarchical clustering.

机译:多维数据的信息可视化设计:将按功能排列的框架与层次化群集集成在一起。

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摘要

Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to comprehend patterns in more than three dimensions, and (2) current systems are often a patchwork of graphical and statistical methods leaving many researchers uncertain about how to explore their data in an orderly manner.; This dissertation offers a set of principles and a novel rank-by-feature framework that could enable users to better understand multidimensional and multivariate data by systematically studying distributions in one (1D) or two dimensions (2D), and then discovering relationships, clusters, gaps, outliers, and other features. Users of this rank-by-feature framework can view graphical presentations (histograms, boxplots, and scatterplots), and then choose a feature detection criterion to rank ID or 2D axis-parallel projections. By combining information visualization techniques (overview, coordination, and dynamic query) with summaries and statistical methods, users can systematically examine the most important 1D and 2D axis-parallel projections. This research provides a number of valuable contributions: (a) Graphics, Ranking, and Interaction for Discovery (GRID) principles---a set of principles for exploratory analysis of multidimensional data, which are summarized as: (1) study 1D, study 2D, then find features (2) ranking guides insight, statistics confirm. GRID principles help users organize their discovery process in an orderly manner so as to produce more thorough analyses and extract deeper insights in any multidimensional data application. (b) Rank-by-feature framework---a user interface framework based on the GRID principles. Interactive information visualization techniques are combined with statistical methods and data mining algorithms to enable users to orderly examine multidimensional data sets using ID and 2D projections. (c) The design and implementation of the Hierarchical Clustering Explorer (HCE), an information visualization tool available at www.cs.umd.edu/hcil/hce. HCE implements the rank-by-feature framework and supports interactive exploration of hierarchical clustering results to reveal one of the important features---clusters. (d) Validation through case studies and user surveys: Case studies with motivated experts in three research fields and a user survey via emails to a wide range of HCE users demonstrated the efficacy of HCE and the rank-by-feature framework. These studies also revealed potential improvement opportunities in terms of design and implementation.
机译:多维数据集的交互式探索具有挑战性,因为:(1)难以理解超过三个维度的模式,(2)当前的系统通常是图形和统计方法的拼凑而成,使许多研究人员不确定如何探索其数据井井有条。本文提供了一套原则和新颖的按功能排列的框架,通过系统地研究一维(1D)或二维(2D)的分布,然后发现关系,聚类,用户可以更好地理解多维和多元数据。差距,离群值和其他特征。该按功能分级框架的用户可以查看图形表示(直方图,箱形图和散点图),然后选择特征检测标准来对ID或2D轴平行投影进行分级。通过将信息可视化技术(概述,协调和动态查询)与摘要和统计方法结合起来,用户可以系统地检查最重要的1D和2D轴平行投影。这项研究提供了许多有价值的贡献:(a)图形,排名和发现交互(GRID)原则---多维数据探索性分析的一组原则,总结为:(1)研究1D,研究2D,然后查找特征(2)排序指导见解,统计确认。 GRID原则可帮助用户有条不紊地组织其发现过程,以便在任何多维数据应用程序中进行更全面的分析并提取更深刻的见解。 (b)按功能分级框架-一种基于GRID原则的用户界面框架。交互式信息可视化技术与统计方法和数据挖掘算法相结合,使用户能够使用ID和2D投影有序检查多维数据集。 (c)分层群集浏览器(HCE)的设计和实现,该信息可视化工具可从www.cs.umd.edu/hcil/hce获得。 HCE实现了按功能排序的框架,并支持对分层聚类结果进行交互探索,以揭示重要的特征之一-集群。 (d)通过案例研究和用户调查进行验证:与三个研究领域的积极专家进行案例研究,并通过电子邮件向广泛的HCE用户发送用户调查,证明了HCE和按功能排序框架的有效性。这些研究还揭示了在设计和实施方面的潜在改进机会。

著录项

  • 作者

    Seo, Jinwook.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 227 p.
  • 总页数 227
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

  • 入库时间 2022-08-17 11:41:55

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