DocumentCode :
2937113
Title :
Toward a Multi-Analyst, Collaborative Framework for Visual Analytics
Author :
Brennan, Susan E. ; Mueller, Klaus ; Zelinsky, Greg ; Ramakrishnan, IV ; Warren, David S. ; Kaufman, Arie
Author_Institution :
Stony Brook Univ., NY
fYear :
2006
fDate :
Oct. 31 2006-Nov. 2 2006
Firstpage :
129
Lastpage :
136
Abstract :
We describe a framework for the display of complex, multidimensional data, designed to facilitate exploration, analysis, and collaboration among multiple analysts. This framework aims to support human collaboration by making it easier to share representations, to translate from one point of view to another, to explain arguments, to update conclusions when underlying assumptions change, and to justify or account for decisions or actions. Multidimensional visualization techniques are used with interactive, context-sensitive, and tunable graphs. Visual representations are flexibly generated using a knowledge representation scheme based on annotated logic; this enables not only tracking and fusing different viewpoints, but also unpacking them. Fusing representations supports the creation of multidimensional meta-displays as well as the translation or mapping from one point of view to another. At the same time, analysts also need to be able to unpack one another´s complex chains of reasoning, especially if they have reached different conclusions, and to determine the implications, if any, when underlying assumptions or evidence turn out to be false. The framework enables us to support a variety of scenarios as well as to systematically generate and test experimental hypotheses about the impact of different kinds of visual representations upon interactive collaboration by teams of distributed analysts
Keywords :
data visualisation; groupware; knowledge representation; collaborative visualization; data management; distributed visualization; interactive collaboration; knowledge representation; multidimensional visualization; visual analytics; visual knowledge discovery; visual representation; Collaboration; Collaborative work; Data visualization; History; Humans; Information analysis; Knowledge representation; Multidimensional systems; Uncertainty; Visual analytics; Collaborative and distributed visualization; Data management and knowledge representation; Visual Analytics; Visual knowledge discovery;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Visual Analytics Science And Technology, 2006 IEEE Symposium On
Conference_Location :
Baltimore, MD
Print_ISBN :
1-4244-0591-2
Electronic_ISBN :
1-4244-0592-0
Type :
conf
DOI :
10.1109/VAST.2006.261439
Filename :
4035757
Link To Document :
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