HiRegEx: Interactive Visual Query and Exploration of Multivariate Hierarchical Data
August 13, 2024 Β· Declared Dead Β· π IEEE Transactions on Visualization and Computer Graphics
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Authors
Guozheng Li, Haotian Mi, Chi Harold Liu, Takayuki Itoh, Guoren Wang
arXiv ID
2408.06601
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.GR
Citations
1
Venue
IEEE Transactions on Visualization and Computer Graphics
Last Checked
4 months ago
Abstract
When using exploratory visual analysis to examine multivariate hierarchical data, users often need to query data to narrow down the scope of analysis. However, formulating effective query expressions remains a challenge for multivariate hierarchical data, particularly when datasets become very large. To address this issue, we develop a declarative grammar, HiRegEx (Hierarchical data Regular Expression), for querying and exploring multivariate hierarchical data. Rooted in the extended multi-level task topology framework for tree visualizations (e-MLTT), HiRegEx delineates three query targets (node, path, and subtree) and two aspects for querying these targets (features and positions), and uses operators developed based on classical regular expressions for query construction. Based on the HiRegEx grammar, we develop an exploratory framework for querying and exploring multivariate hierarchical data and integrate it into the TreeQueryER prototype system. The exploratory framework includes three major components: top-down pattern specification, bottom-up data-driven inquiry, and context-creation data overview. We validate the expressiveness of HiRegEx with the tasks from the e-MLTT framework and showcase the utility and effectiveness of TreeQueryER system through a case study involving expert users in the analysis of a citation tree dataset.
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