Return to search

Visualization of large category map for Internet browsing

Artificial Intelligence Lab, Department of MIS, University of Arizona / Information overload is a critical problem in World Wide Web. Category map developed based on Kohonenâ s selforganizing map (SOM) has been proven to be a promising browsing tool for the Web. The SOM algorithm automatically
categorizes a large Internet information space into manageable sub-spaces. It compresses and transforms a complex information space into a two-dimensional graphical representation. Such graphical representation provides a user-friendly interface for users to explore the automatically generated mental model. However, as the amount of information increases, it is expected to
increase the size of the category map accordingly in order to accommodate the important concepts in the information space. It results in increasing of visual load of the category map. Large pool of information is packed closely together on a limited size of displaying window, where local details are difficult to be clearly seen. In this paper, we propose the fisheye views and fractal views to support the visualization of category map. Fisheye views are developed based on the distortion approach while fractal views are developed based on the information reduction approach. The purpose of fisheye views are to enlarge the regions of interest and diminish the regions that are further away while maintaining the global structure. On the other hand, fractal views are an approximation mechanism to abstract complex objects and control the amount of information to be displayed. We have
developed a prototype system and conducted a user evaluation to investigate the performance of fisheye views and fractal views. The results show that both fisheye views and fractal views significantly increase the effectiveness of visualizing category map. In addition, fractal views are significantly better than fisheye views but the combination of fractal views and fisheye views
do not increase the performance compared to each individual technique.

Identiferoai:union.ndltd.org:arizona.edu/oai:arizona.openrepository.com:10150/106272
Date04 1900
CreatorsYang, Christopher C., Chen, Hsinchun, Hong, Kay
PublisherElsevier
Source SetsUniversity of Arizona
LanguageEnglish
Detected LanguageEnglish
TypeJournal Article (Paginated)

Page generated in 0.002 seconds