DocumentCode
2288412
Title
Hierarchical models for data visualization
Author
Tipping, Michael E. ; Bishop, Christopher M.
Author_Institution
Neural Comput. Res. Group, Aston Univ., Birmingham, UK
fYear
1997
fDate
7-9 Jul 1997
Firstpage
70
Lastpage
75
Abstract
Visualization has proven to be a powerful and widely-applicable tool for the analysis and interpretation of data. Most visualization algorithms aim to find a projection from the data space down to a two-dimensional visualization space. However, for complex data sets living in a high-dimensional space it is unlikely that a single two-dimensional projection can reveal all of the interesting structure. We therefore introduce a hierarchical visualization algorithm which allows the complete data set to be visualized at the top level, with clusters and sub-clusters of data points visualized at deeper levels. The algorithm is based on a hierarchical mixture of latent variable models, whose parameters are estimated using the expectation-maximisation algorithm. We demonstrate the principle of the approach first on a toy data set, and then apply the algorithm to the visualization of a synthetic data set in 12 dimensions obtained from a simulation of multi-phase flows in oil pipelines
Keywords
data visualisation; data interpretation; data space; data visualization; expectation-maximisation algorithm; hierarchical mixture; hierarchical models; high-dimensional space; latent variable models; multi-phase flows;
fLanguage
English
Publisher
iet
Conference_Titel
Artificial Neural Networks, Fifth International Conference on (Conf. Publ. No. 440)
Conference_Location
Cambridge
ISSN
0537-9989
Print_ISBN
0-85296-690-3
Type
conf
DOI
10.1049/cp:19970704
Filename
607495
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