ABSTRACT
No abstract available.
- S. Kaski, T. Honkela, K. Lagus, and T. Kohonen. WEBSOM---self-organizing maps of document collections. Neurocomputing, 21:101--117, 1998.Google ScholarCross Ref
- S. Kaski, J. Venna, and T. Kohonen. Coloring that reveals high-dimensional structures in data. In T. G. et al., editor, Proc. of ICONIP'99, volume II, pages 729--734. IEEE, Piscataway, NJ, 1999.Google Scholar
- T. Kohonen. Self-Organizing Maps. Springer, Berlin, 2001. Google ScholarDigital Library
- T. Kohonen, S. Kaski, K. Lagus, J. Salojärvi, J. Honkela, V. Paatero, and A. Saarela. Self-organization of a massive document collection. IEEE Transactions on Neural Networks, 11:574--585, 2000. Google ScholarDigital Library
Index Terms
- GS textplorer -: adaptive framework for information retrieval
Recommendations
Websom for Textual Data Mining
Special issue on data mining on the InternetNew methods that are user-friendly and efficient are needed for guidance among the masses of textual information available in the Internet and the World Wide Web. We have developed a method and a tool called the WEBSOM which utilizes the self-organizing ...
Media map: a multilingual document map with a design interface
WSOM'11: Proceedings of the 8th international conference on Advances in self-organizing mapsWe present a selection of results produced in a project called Media Map. The project aims at developing an intuitive user interface to a library information system containing data on projects and publications. The user interface is a two-dimensional ...
Mining massive document collections by the WEBSOM method
Special issue: Soft computing data miningA viable alternative to the traditional text-mining methods is the WEBSOM, a software system based on the Self-Organizing Map (SOM) principle. Prior to the searching or browsing operations, this method orders a collection of textual items, say, ...
Comments