Title :
Multidimensional visual analysis using cross-filtered views
Author_Institution :
GeoVISTA Center & Dept. of Geogr., Pennsylvania State Univ., University Park, PA
Abstract :
Analysis of multidimensional data often requires careful examination of relationships across dimensions. Coordinated multiple view approaches have become commonplace in visual analysis tools because they directly support expression of complex multidimensional queries using simple interactions. However, generating such tools remains difficult because of the need to map domain-specific data structures and semantics into the idiosyncratic combinations of interdependent data and visual abstractions needed to reveal particular patterns and distributions in cross-dimensional relationships. This paper describes: (1) a method for interactively expressing sequences of multidimensional set queries by cross-filtering data values across pairs of views, and (2) design strategies for constructing coordinated multiple view interfaces for cross-filtered visual analysis of multidimensional data sets. Using examples of cross-filtered visualizations of data from several different domains, we describe how cross-filtering can be modularized and reused across designs, flexibly customized with respect to data types across multiple dimensions, and incorporated into more wide-ranging multiple view designs. The demonstrated analytic utility of these examples suggest that cross-filtering is a suitable design pattern for instantiation in a wide variety of visual analysis tools.
Keywords :
data analysis; data structures; data visualisation; query processing; visual databases; complex multidimensional set query expression; cross-filtered coordinated multiple view interface; data semantics; data visualization; design strategy; domain-specific data structure mapping; idiosyncratic combination; multidimensional visual data analysis tool; visual abstraction; Data analysis; Data structures; Data visualization; Geography; Management information systems; Multidimensional systems; Pattern analysis; Prototypes; Software engineering; Usability; D.2.2 [Software Engineering]: Design Tools and Techniques—[User Interfaces]; H.2.3 [Information Systems]: Database Management—[Languages]; H.5.2 [Information Systems]: Information Interfaces and Presentation—[User Interfaces];
Conference_Titel :
Visual Analytics Science and Technology, 2008. VAST '08. IEEE Symposium on
Conference_Location :
Columbus, OH
Print_ISBN :
978-1-4244-2935-6
DOI :
10.1109/VAST.2008.4677370