Established in 2005 under support of MŠMT ČR (project 1M0572)

Publications

The Problem of Fragile Feature Subset Preference in Feature Selection Methods and A Proposal of Algorithmic Workaround

Typ:
Conference paper
Authors:
Somol P., Grim J., Pudil P.
Proceedings name:
Proc. 2010 Int. Conf. on Pattern Recognition
Publisher:
IEEE Computer Society
Serie:
Istanbul
Year:
2010
ISBN:
978-0-7695-4109-9
ISSN:
1051-4651
Keywords:
feature selection, machine learning, over-fitting, classific
Anotation:
We point out a problem inherent in the optimization scheme of many popular feature selection methods. It follows from the implicit assumption that higher feature selection criterion value always indicates more preferable subset even if the value difference is marginal. This assumption ignores the reliability issues of particular feature preferences, overfitting and feature acquisition cost. We propose an algorithmic extension applicable to many standard feature selection methods allowing better control over feature subset preference. We show experimentally that the proposed mechanism is capable of reducing the size of selected subsets as well as improving classifier generalization.
 
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