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Publikace

Feature Selection Based on Mutual Correlation.

Typ:
Článek v odborném periodiku
Autoři publikace:
Haindl M., Somol P., Ververidis D., Kotropoulos C.
Název periodika:
Lecture Notes in Computer Science.
Ročník:
19
Rok:
2006
Číslo:
4225
Strany:
569-577
ISSN:
0302-9743
Klíčová slova:
feature selection
Anotace:
Feature selection is a critical procedure in many pattern recognition applications. There are two distinct mechanisms for feature selection namely the wrapper methods and the filter methods. The filter methods are generally considered inferior to wrapper methods, however wrapper methods are computationally more demanding than filter methods. A novel filter feature selection method based on mutual correlation is proposed. We assess the classification performance of the proposed filter method by using the selected features to the Bayes classifier. Alternative filter feature selection methods that optimize either the Bhattacharrrya distance or the divergence are also tested. Furthermore, wrapper feature selection techniques employing several search strategies
such as the sequential forward search, the oscillating search, and the sequential floating forward search are also included in the comparative study. A trade off between the classification accuracy and the feature set dimensionality is demonstrated on both two benchmark datasets from UCI repository and two emotional speech data collections.

[Iberoamerican Congress on Pattern Recognition. CIARP 2006 /11./. Cancun, 14.11.2006-17.11.2006]
 
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