Visualizing data in high-dimensional spaces
Abstract
A novel approach to the analysis of feature spaces in
statistical pattern recognition is described. This approach starts
with linear dimensionality reduction, followed by the computation
of selected sections through and projections of feature space. A
number of representative feature spaces are analysed in this way;
we find linear reduction to be surprisingly successful, and in the
real-world data sets we have examined, typical classes of objects
are only moderately complicated.
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- Faculty of Engineering [1136]