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Fifth IEEE International Conference on Data Mining (ICDM'05)
Stability of Feature Selection Algorithms
Houston, Texas
November 27-November 30
ISBN: 0-7695-2278-5
Alexandros Kalousis, University of Geneva
Julien Prados, University of Geneva
Melanie Hilario, University of Geneva
With the proliferation of extremely high-dimensional data, feature selection algorithms have become indispensable components of the learning process. Strangely, despite extensive work on the stability of learning algorithms, the stability of feature selection algorithms has been relatively neglected. This study is an attempt to fill that gap by quantifying the sensitivity of feature selection algorithms to variations in the training set. We assess the stability of feature selection algorithms based on the stability of the feature preferences that they express in the form of weights-scores, ranks, or a selected feature subset. We examine a number of measures to quantify the stability of feature preferences and propose an empirical way to estimate them. We perform a series of experiments with several feature selection algorithms on a set of proteomics datasets. The experiments allow us to explore the merits of each stability measure and create stability profiles of the feature selection algorithms. Finally we show how stability profiles can support the choice of a feature selection algorithm.
Citation:
Alexandros Kalousis, Julien Prados, Melanie Hilario, "Stability of Feature Selection Algorithms," icdm, pp.218-225, Fifth IEEE International Conference on Data Mining (ICDM'05), 2005
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