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ACIVS
2009
Springer

Image Categorization Using ESFS: A New Embedded Feature Selection Method Based on SFS

13 years 11 months ago
Image Categorization Using ESFS: A New Embedded Feature Selection Method Based on SFS
Abstract. Feature subset selection is an important subject when training classifiers in Machine Learning (ML) problems. Too many input features in a ML problem may lead to the so-called “curse of dimensionality”, which describes the fact that the complexity of the classifier parameters adjustment during training increases exponentially with the number of features. Thus, ML algorithms are known to suffer from important decrease of the prediction accuracy when faced with many features that are not necessary. In this paper, we introduce a novel embedded feature selection method, called ESFS, which is inspired from the wrapper method SFS since it relies on the simple principle to add incrementally most relevant features. Its originality concerns the use of mass functions from the evidence theory that allows to merge elegantly the information carried by features, in an embedded way, and so leading to a lower computational cost than original SFS. This approach has successfully been ap...
Huanzhang Fu, Zhongzhe Xiao, Emmanuel Dellandr&eac
Added 25 May 2010
Updated 25 May 2010
Type Conference
Year 2009
Where ACIVS
Authors Huanzhang Fu, Zhongzhe Xiao, Emmanuel Dellandréa, Weibei Dou, Liming Chen
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