Visual Analytics for Spatiotemporal Cluster Analysis
abstract: Traditionally, visualization is one of the most important and commonly used methods of generating insight into large scale data. Particularly for spatiotemporal data, the translation of such data into a visual form allows users to quickly see patterns, explore summaries and relate domain k...
Other Authors: | |
---|---|
Format: | Doctoral Thesis |
Language: | English |
Published: |
2016
|
Subjects: | |
Online Access: | http://hdl.handle.net/2286/R.I.38465 |
id |
ndltd-asu.edu-item-38465 |
---|---|
record_format |
oai_dc |
spelling |
ndltd-asu.edu-item-384652018-06-22T03:07:08Z Visual Analytics for Spatiotemporal Cluster Analysis abstract: Traditionally, visualization is one of the most important and commonly used methods of generating insight into large scale data. Particularly for spatiotemporal data, the translation of such data into a visual form allows users to quickly see patterns, explore summaries and relate domain knowledge about underlying geographical phenomena that would not be apparent in tabular form. However, several critical challenges arise when visualizing and exploring these large spatiotemporal datasets. While, the underlying geographical component of the data lends itself well to univariate visualization in the form of traditional cartographic representations (e.g., choropleth, isopleth, dasymetric maps), as the data becomes multivariate, cartographic representations become more complex. To simplify the visual representations, analytical methods such as clustering and feature extraction are often applied as part of the classification phase. The automatic classification can then be rendered onto a map; however, one common issue in data classification is that items near a classification boundary are often mislabeled. This thesis explores methods to augment the automated spatial classification by utilizing interactive machine learning as part of the cluster creation step. First, this thesis explores the design space for spatiotemporal analysis through the development of a comprehensive data wrangling and exploratory data analysis platform. Second, this system is augmented with a novel method for evaluating the visual impact of edge cases for multivariate geographic projections. Finally, system features and functionality are demonstrated through a series of case studies, with key features including similarity analysis, multivariate clustering, and novel visual support for cluster comparison. Dissertation/Thesis Zhang, Yifan (Author) Maciejewski, Ross (Advisor) Mack, Elizabeth (Committee member) Liu, Huan (Committee member) Davulcu, Hasan (Committee member) Arizona State University (Publisher) Computer science Clustering Spatiotemporal Visual Analytics Visualization eng 133 pages Doctoral Dissertation Computer Science 2016 Doctoral Dissertation http://hdl.handle.net/2286/R.I.38465 http://rightsstatements.org/vocab/InC/1.0/ All Rights Reserved 2016 |
collection |
NDLTD |
language |
English |
format |
Doctoral Thesis |
sources |
NDLTD |
topic |
Computer science Clustering Spatiotemporal Visual Analytics Visualization |
spellingShingle |
Computer science Clustering Spatiotemporal Visual Analytics Visualization Visual Analytics for Spatiotemporal Cluster Analysis |
description |
abstract: Traditionally, visualization is one of the most important and commonly used methods of generating insight into large scale data. Particularly for spatiotemporal data, the translation of such data into a visual form allows users to quickly see patterns, explore summaries and relate domain knowledge about underlying geographical phenomena that would not be apparent in tabular form. However, several critical challenges arise when visualizing and exploring these large spatiotemporal datasets. While, the underlying geographical component of the data lends itself well to univariate visualization in the form of traditional cartographic representations (e.g., choropleth, isopleth, dasymetric maps), as the data becomes multivariate, cartographic representations become more complex. To simplify the visual representations, analytical methods such as clustering and feature extraction are often applied as part of the classification phase. The automatic classification can then be rendered onto a map; however, one common issue in data classification is that items near a classification boundary are often mislabeled.
This thesis explores methods to augment the automated spatial classification by utilizing interactive machine learning as part of the cluster creation step. First, this thesis explores the design space for spatiotemporal analysis through the development of a comprehensive data wrangling and exploratory data analysis platform. Second, this system is augmented with a novel method for evaluating the visual impact of edge cases for multivariate geographic projections. Finally, system features and functionality are demonstrated through a series of case studies, with key features including similarity analysis, multivariate clustering, and novel visual support for cluster comparison. === Dissertation/Thesis === Doctoral Dissertation Computer Science 2016 |
author2 |
Zhang, Yifan (Author) |
author_facet |
Zhang, Yifan (Author) |
title |
Visual Analytics for Spatiotemporal Cluster Analysis |
title_short |
Visual Analytics for Spatiotemporal Cluster Analysis |
title_full |
Visual Analytics for Spatiotemporal Cluster Analysis |
title_fullStr |
Visual Analytics for Spatiotemporal Cluster Analysis |
title_full_unstemmed |
Visual Analytics for Spatiotemporal Cluster Analysis |
title_sort |
visual analytics for spatiotemporal cluster analysis |
publishDate |
2016 |
url |
http://hdl.handle.net/2286/R.I.38465 |
_version_ |
1718701050601406464 |