DocumentCode
2165853
Title
POLARMAP - Efficient Visualisation of High Dimensional Data
Author
Rehm, Frank ; Klawonn, Frank ; Kruse, Rudolf
Author_Institution
German Aerosp. Center, Braunschweig
fYear
2006
fDate
5-7 July 2006
Firstpage
731
Lastpage
740
Abstract
Multidimensional scaling provides low-dimensional visualisation of high-dimensional feature vectors. This is a very important step in data preprocessing because it helps the user to appraise which methods to use for further data analysis. But a well known problem with conventional MDS is the quadratic need of space and time. Beside this, a transformation of MDS must be completely recomputed if additional feature vectors have to be considered. The POLARMAP algorithm, presented in this paper, learns a function, similar to NeuroScale, but with lower computational costs, that maps high-dimensional feature vectors to a 2-dimensional feature space. With the obtained function even new feature vectors can be mapped to the target space
Keywords
computational complexity; data reduction; data visualisation; learning (artificial intelligence); 2D feature space; POLARMAP; Sammon mapping; data analysis; data preprocessing; dimension reduction; feature vectors; high dimensional data visualisation; learning; multidimensional scaling; Appraisal; Computational efficiency; Data analysis; Data preprocessing; Data visualization; Multidimensional systems; Principal component analysis; Multidimensional Scaling; Sammon’s Mapping.; Visualisation;
fLanguage
English
Publisher
ieee
Conference_Titel
Information Visualization, 2006. IV 2006. Tenth International Conference on
Conference_Location
London, England
ISSN
1550-6037
Print_ISBN
0-7695-2602-0
Type
conf
DOI
10.1109/IV.2006.85
Filename
1648341
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