Abstract
In numerous application areas fast growing data sets develop with ever higher complexity and dynamics. A central challenge is to filter the substantial information and to communicate it to humans in an appropriate way. Approaches, which work either on a purely analytical or on a purely visual level, do not sufficiently help due to the dynamics and complexity of the underlying processes or due to a situation with intelligent opponents. Only a combination of data analysis and visualization techniques make an effective access to the otherwise unmanageably complex data sets possible.
Visual analysis techniques extend the perceptual and cognitive abilities of humans with automatic data analysis techniques, and help to gain insights for optimizing and steering complicated processes. In the paper, we introduce the basic idea of Visual Analytics, explain how automated discovery and visual analysis methods can be combined, discuss the main challenges of Visual Analytics, and show that combining automatic and visual analysis is the only chance to capture the complex, changing characteristics of the data. To further explain the Visual Analytics process, we provide examples from the area of document analysis.
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References
Thomas, J., Cook, K.: Illuminating the Path: Research and Development Agenda for Visual Analytics. IEEE Press, Los Alamitos (2005)
Shneiderman, B.: The eyes have it: A task by data type taxonomy for information visualizations. In: IEEE Symposium on Visual Languages, pp. 336–343 (1996)
Keim, D.A., Mansmann, F., Schneidewind, J., Ziegler, H.: Challenges in visual data analysis. In: Information Visualization (IV 2006), London, United Kingdom, July 5-7. IEEE, Los Alamitos (2006)
Eick, S.G.: Visual scalability. Journal of Computational & Graphical Statistics (March 2002)
Klein, D., Manning, C.D.: Accurate unlexicalized parsing. In: ACL 2003: Proceedings of the 41st Annual Meeting on Association for Computational Linguistics, pp. 423–430. Association for Computational Linguistics (2003), http://nlp.stanford.edu/software/lex-parser.shtml
Hadjar, K., Rigamonti, M., Lalanne, D., Ingold, R.: Xed: a new tool for extracting hidden structures from electronic documents. In: International Workshop on Document Image Analysis for Libraries, pp. 212–224 (2004)
Oelke, D., Bak, P., Keim, D., Last, M., Danon, G.: Visual evaluation of text features for document summarization and analysis. In: IEEE Symposium on Visual Analytics and Technology (VAST 2008) (to appear, 2008)
Ding, X., Liu, B., Yu, P.S.: A holistic lexicon-based approach to opinion mining. In: WSDM 2008: Proceedings of the international conference on Web search and web data mining, pp. 231–240. ACM, New York (2008)
Keim, D., Oelke, D.: Literature fingerprinting: A new method for visual literary analysis. In: IEEE Symposium on Visual Analytics and Technology (VAST 2007) (2007)
Holmes, D.I.: Authorship Attribution. Computers and the Humanities 28, 87–106 (1994)
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Keim, D.A., Mansmann, F., Oelke, D., Ziegler, H. (2008). Visual Analytics: Combining Automated Discovery with Interactive Visualizations. In: Jean-Fran, JF., Berthold, M.R., Horváth, T. (eds) Discovery Science. DS 2008. Lecture Notes in Computer Science(), vol 5255. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-540-88411-8_2
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DOI: https://doi.org/10.1007/978-3-540-88411-8_2
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