Visual exploration of high-dimensional spaces through identification, summarization, and interpretation of two-dimensional projections

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Title Visual exploration of high-dimensional spaces through identification, summarization, and interpretation of two-dimensional projections
Publication Type dissertation
School or College College of Engineering
Department Computing
Author Liu, Shusen
Date 2017
Description With the ever-increasing amount of available computing resources and sensing devices, a wide variety of high-dimensional datasets are being produced in numerous fields. The complexity and increasing popularity of these data have led to new challenges and opportunities in visualization. Since most display devices are limited to communication through two-dimensional (2D) images, many visualization methods rely on 2D projections to express high-dimensional information. Such a reduction of dimension leads to an explosion in the number of 2D representations required to visualize high-dimensional spaces, each giving a glimpse of the high-dimensional information. As a result, one of the most important challenges in visualizing high-dimensional datasets is the automatic filtration and summarization of the large exploration space consisting of all 2D projections. In this dissertation, a new type of algorithm is introduced to reduce the exploration space that identifies a small set of projections that capture the intrinsic structure of high-dimensional data. In addition, a general framework for summarizing the structure of quality measures in the space of all linear 2D projections is presented. However, identifying the representative or informative projections is only part of the challenge. Due to the high-dimensional nature of these datasets, obtaining insights and arriving at conclusions based solely on 2D representations are limited and prone to error. How to interpret the inaccuracies and resolve the ambiguity in the 2D projections is the other half of the puzzle. This dissertation introduces projection distortion error measures and interactive manipulation schemes that allow the understanding of high-dimensional structures via data manipulation in 2D projections.
Type Text
Publisher University of Utah
Subject Computer science
Dissertation Name Doctor of Philosophy
Language eng
Rights Management (c) Shusen Liu
Format application/pdf
Format Medium application/pdf
ARK ark:/87278/s6187mtf
Setname ir_etd
ID 1419302
Reference URL https://collections.lib.utah.edu/ark:/87278/s6187mtf
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