Visualize It-Wise! An Iteration-Wise Computational Framework for Real-Time Visual Analytics

Author(s)
Choo, Jaegul
Lee, Changhyun
Advisor(s)
Editor(s)
Associated Organization(s)
Organizational Unit
Organizational Unit
School of Computational Science and Engineering
School established in May 2010
Supplementary to:
Abstract
Abstract Visual analytics has been gaining increasing interest due to its fascinating characteristic that leverages both humans’ visual perception and the power of computing. Although various computational methods are being proposed, they do not properly support visual analytics. One of the biggest obstacles towards their real-time visual analytic integration is their high computational complexity. As a way to tackle this problem, this paper presents an iteration-wise computational framework, motivated by the fact that most advanced computational methods work by refining the solution iteratively. By visually delivering the results for each iteration to users, the proposed framework enables users to quickly acquire the information that the computational method provides as well as the ability to interact with them in real time. We show the benefits of the proposed framework by using various dimension reduction and clustering methods.
Sponsor
Date
2013
Extent
Resource Type
Text
Resource Subtype
Technical Report
Rights Statement
Rights URI