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Feature extraction algorithms for pattern classification

conference contribution
posted on 2024-02-07, 18:54 authored by S. Goodman, Andrew Hunter
<p>Feature extraction is often an important preprocessing step in classifier design, in order to overcome the problems associated with having a large input space. A common way of doing this is to use principle component analysis to find the most important features. However, it has been recognised that this may not produce an optimal set of features in some problems since the method relies on the second order statistics (covariance structure) of the data. In the paper a method called projection pursuit is presented, which is capable of extracting features based on higher order statistics of the distribution. The original projection pursuit algorithm performs a full d-dimensional search (where d is the number of features sought) that is impractical when d is large. Instead, a simple stepwise approach is suggested in which the computations only grow linearly with d. Some simulations on six publicly available data sets are shown which shows how it may be superior to PCA on some tasks in pattern classification</p>

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publisher

IEEE Xplore

ISSN

0537-9989

ISBN

0852967217

Date Submitted

2010-07-09

Date Accepted

2010-07-09

Date of First Publication

2010-07-09

Date of Final Publication

2010-07-09

Event Name

9th International Conference on Neural Networks

Event Dates

7-10 September 1999

Date Document First Uploaded

2010-07-09

ePrints ID

2833

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