François Yvon

  1. Efficient Learning of Sparse Conditional Random Fields for Supervised Sequence Labelling.

    Authors: Nataliya Sokolovska, Thomas Lavergne, Olivier Cappé, François Yvon
    Subjects: Learning
    Abstract

    Conditional Random Fields (CRFs) constitute a popular and efficient approach
    for supervised sequence labelling. CRFs can cope with large description spaces
    and can integrate some form of structural dependency between labels. In this
    contribution, we address the issue of efficient feature selection for CRFs
    based on imposing sparsity through an L1 penalty. We first show how sparsity of
    the parameter set can be exploited to significantly speed up training and
    labelling. We then introduce coordinate descent parameter update schemes for
    CRFs with L1 regularization.

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