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Correlation-based Feature Selection Strategy in Neural Classification
2006
Sixth International Conference on Intelligent Systems Design and Applications
In classification problems, the issue of high dimensionality, of data is often considered important. To lower data dimensionality, feature selection methods are often employed. To select a set of features that will span a representation space that is as good as possible for the classification task, one must take into consideration possible interdependencies between the features. As a trade-off between the complexity of the selection process and the quality of the selected feature set, a
doi:10.1109/isda.2006.128
dblp:conf/isda/MichalakK06
fatcat:fxpmnzbsibbr5pddhg7vttyoe4