Selection of the Linearly Separable Feature Subsets

نویسندگان

  • Leon Bobrowski
  • Tomasz Lukaszuk
چکیده

We address a situation when more than one feature subset allows for linear separability of given data sets. Such situation can occur if a small number of cases is represented in a highly dimensional feature space. The method of the feature selection based on minimisation of a special criterion function is here analysed. This criterion function is convex and piecewise-linear (CPL). The proposed method allows to evaluate different feature subsets enabling linear separability and to choose the best one among them. A comparison of this method with the Support Vector Machines is also included. ()

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تاریخ انتشار 2004