Damien François

  1. Advances in Feature Selection with Mutual Information.

    Authors: Michel Verleysen, Fabrice Rossi, Damien François
    Subjects: Learning
    Abstract

    The selection of features that are relevant for a prediction or
    classification problem is an important problem in many domains involving
    high-dimensional data. Selecting features helps fighting the curse of
    dimensionality, improving the performances of prediction or classification
    methods, and interpreting the application. In a nonlinear context, the mutual
    information is widely used as relevance criterion for features and sets of
    features.

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