Visual Hierarchical Dimension Reduction

Traditional visualization techniques for multidimensional data sets, such as parallel coordinates, star glyphs, and scatterplot matrices, do not scale well to high dimensional data sets. A common approach to solve this problem is dimensionality reduction. Existing dimensionality reduction techniques...

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Main Author: Yang, Jing
Other Authors: M. O. Ward, Advisor
Format: Others
Published: Digital WPI 2002
Subjects:
Online Access:https://digitalcommons.wpi.edu/etd-theses/47
https://digitalcommons.wpi.edu/cgi/viewcontent.cgi?article=1046&context=etd-theses
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spelling ndltd-wpi.edu-oai-digitalcommons.wpi.edu-etd-theses-10462019-03-22T05:47:16Z Visual Hierarchical Dimension Reduction Yang, Jing Traditional visualization techniques for multidimensional data sets, such as parallel coordinates, star glyphs, and scatterplot matrices, do not scale well to high dimensional data sets. A common approach to solve this problem is dimensionality reduction. Existing dimensionality reduction techniques, such as Principal Component Analysis, Multidimensional Scaling, and Self Organizing Maps, have serious drawbacks in that the generated low dimensional subspace has no intuitive meaning to users. In addition, little user interaction is allowed in those highly automatic processes. In this thesis, we propose a new methodology to dimensionality reduction that combines automation and user interaction for the generation of meaningful subspaces, called the visual hierarchical dimension reduction (VHDR) framework. Firstly, VHDR groups all dimensions of a data set into a dimension hierarchy. This hierarchy is then visualized using a radial space-filling hierarchy visualization tool called Sunburst. Thus users are allowed to interactively explore and modify the dimension hierarchy, and select clusters at different levels of detail for the data display. VHDR then assigns a representative dimension to each dimension cluster selected by the users. Finally, VHDR maps the high-dimensional data set into the subspace composed of these representative dimensions and displays the projected subspace. To accomplish the latter, we have designed several extensions to existing popular multidimensional display techniques, such as parallel coordinates, star glyphs, and scatterplot matrices. These displays have been enhanced to express semantics of the selected subspace, such as the context of the dimensions and dissimilarity among the individual dimensions in a cluster. We have implemented all these features and incorporated them into the XmdvTool software package, which will be released as XmdvTool Version 6.0. Lastly, we developed two case studies to show how we apply VHDR to visualize and interactively explore a high dimensional data set. 2002-01-09T08:00:00Z text application/pdf https://digitalcommons.wpi.edu/etd-theses/47 https://digitalcommons.wpi.edu/cgi/viewcontent.cgi?article=1046&context=etd-theses Masters Theses (All Theses, All Years) Digital WPI M. O. Ward, Advisor D. Brown, Reader Elke A. Rundensteiner hierarchy sunburst dimension reduction high dimensional data set multidimensional visualization parallel coordinates scatterplot matrices star glyphs
collection NDLTD
format Others
sources NDLTD
topic hierarchy
sunburst
dimension reduction
high dimensional data set
multidimensional visualization
parallel coordinates
scatterplot matrices
star glyphs
spellingShingle hierarchy
sunburst
dimension reduction
high dimensional data set
multidimensional visualization
parallel coordinates
scatterplot matrices
star glyphs
Yang, Jing
Visual Hierarchical Dimension Reduction
description Traditional visualization techniques for multidimensional data sets, such as parallel coordinates, star glyphs, and scatterplot matrices, do not scale well to high dimensional data sets. A common approach to solve this problem is dimensionality reduction. Existing dimensionality reduction techniques, such as Principal Component Analysis, Multidimensional Scaling, and Self Organizing Maps, have serious drawbacks in that the generated low dimensional subspace has no intuitive meaning to users. In addition, little user interaction is allowed in those highly automatic processes. In this thesis, we propose a new methodology to dimensionality reduction that combines automation and user interaction for the generation of meaningful subspaces, called the visual hierarchical dimension reduction (VHDR) framework. Firstly, VHDR groups all dimensions of a data set into a dimension hierarchy. This hierarchy is then visualized using a radial space-filling hierarchy visualization tool called Sunburst. Thus users are allowed to interactively explore and modify the dimension hierarchy, and select clusters at different levels of detail for the data display. VHDR then assigns a representative dimension to each dimension cluster selected by the users. Finally, VHDR maps the high-dimensional data set into the subspace composed of these representative dimensions and displays the projected subspace. To accomplish the latter, we have designed several extensions to existing popular multidimensional display techniques, such as parallel coordinates, star glyphs, and scatterplot matrices. These displays have been enhanced to express semantics of the selected subspace, such as the context of the dimensions and dissimilarity among the individual dimensions in a cluster. We have implemented all these features and incorporated them into the XmdvTool software package, which will be released as XmdvTool Version 6.0. Lastly, we developed two case studies to show how we apply VHDR to visualize and interactively explore a high dimensional data set.
author2 M. O. Ward, Advisor
author_facet M. O. Ward, Advisor
Yang, Jing
author Yang, Jing
author_sort Yang, Jing
title Visual Hierarchical Dimension Reduction
title_short Visual Hierarchical Dimension Reduction
title_full Visual Hierarchical Dimension Reduction
title_fullStr Visual Hierarchical Dimension Reduction
title_full_unstemmed Visual Hierarchical Dimension Reduction
title_sort visual hierarchical dimension reduction
publisher Digital WPI
publishDate 2002
url https://digitalcommons.wpi.edu/etd-theses/47
https://digitalcommons.wpi.edu/cgi/viewcontent.cgi?article=1046&context=etd-theses
work_keys_str_mv AT yangjing visualhierarchicaldimensionreduction
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