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Since only the first step is computationally
expensive, applying it only a subset of the data set
and using the second step to generalize the result to
the remaining data samples we can make the overall
approach applicable to larger data sets; this option is
not available in the generic agglomerative process.
The efficiency of the proposed algorithm has
been demonstrated via application to a synthetic data
set as well as to a variety of real data sets; although
classical hierarchical approaches fail in these
examples, the performance of our approach was
shown to be comparable to those of supervised
partitioning algorithms and of trained classifiers.
In the framework of the EU IST-1999-20502
"FAETHON" project, we are applying this
methodology for analysis of information retrieval
usage history aiming at the extracting semantic and
metadata related user preferences.
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IST-1999-20502. FAETHON: Unified Intelligent Access
to Heterogeneous Audiovisual Content.
http://www.image.ece.ntua.gr/faethon/
ICEIS 2004 - ARTIFICIAL INTELLIGENCE AND DECISION SUPPORT SYSTEMS
416