[Corpora-List] CFP: ACL 2005 Workshop on Feature Engineering for Machine Learning in NLP

From: Eric Ringger (ringger@microsoft.com)
Date: Thu Mar 03 2005 - 05:06:14 MET

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                               CALL FOR PAPERS

                   Feature Engineering for Machine Learning
                        in Natural Language Processing

                      Workshop at the Annual Meeting of
           the Association of Computational Linguistics (ACL 2005)

     http://research.microsoft.com/~ringger/FeatureEngineeringWorkshop/

                  ** Submission Deadline: April 20, 2005 **
                                       

                             Ann Arbor, Michigan
                                June 29, 2005

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    As experience with machine learning for solving natural language
    processing tasks accumulates in the field, practitioners are finding
    that feature engineering is as critical as the choice of machine
    learning algorithm, if not more so. Feature design, feature
    selection, and feature impact (through ablation studies and the like)
    significantly affect the performance of systems and deserve greater
    attention. In the wake of the shift away from knowledge engineering
    and of the successes of data-driven and statistical methods,
    researchers in the field are likely to make further progress by
    incorporating additional, sometimes familiar, sources of knowledge as
    features. Although some experience in the area of feature engineering
    is to be found in the theoretical machine learning community, the
    particular demands of natural language processing leave much to be
    discovered.

    This workshop aims to bring together practitioners of NLP, machine
    learning, information extraction, speech processing, and related
    fields with the intention of sharing experimental evidence for
    successful approaches to feature engineering, including feature design
    and feature selection. We welcome papers that address these goals.
    We also seek to distill best practices and to discover new sources of
    knowledge and features previously untapped.

    The workshop will include an invited talk by Andrew McCallum of the
    University of Massachusetts at Amherst.

    SUBMISSION

    Submitted papers should be prepared in PDF format (all fonts included)
    or Microsoft Word .doc format and not longer than 8 pages following
    the ACL style. More detailed information about the format of
    submissions can be found here:

      http://www.aclweb.org/acl2005/index.php?stylefiles

    The language of the workshop is English. Submissions should be sent
    as an attachment to the following email address: ringger AT microsoft
    DOT com . All accepted papers will be presented in oral sessions of
    the workshop and collected in the printed proceedings.

    Submissions are invited on all aspects of feature engineering for
    machine learning in NLP. Topics may include, but are not necessarily
    limited to:

    - Novel methods for discovering or inducing features, such as mining
      the web for closed classes, useful for indicator features.

    - Comparative studies of different feature selection algorithms for
      NLP tasks.

    - Interactive tools that help researchers to identify ambiguous cases
      that could be disambiguated by the addition of features.

    - Error analysis of various aspects of feature induction, selection,
      representation.

    - Issues with representation, e.g., strategies for handling
      hierarchical representations, including decomposing to atomic
      features or by employing statistical relational learning.

    - Techniques used in fields outside NLP that prove useful in NLP.

    - The impact of feature selection and feature design on such practical
      considerations as training time, experimental design, domain
      independence, and evaluation.

    - Analysis of feature engineering and its interaction with specific
      machine learning methods commonly used in NLP.

    - Combining classifiers that employ diverse types of features.

    - Studies of methods for defining a feature set, for example by
      iteratively expanding a base feature set.

    - Issues with representing and combining real-valued and categorical
      features for NLP tasks.

    IMPORTANT DATES

    - Paper submission deadline: April 20, 2005; Noon, PST (GMT-8)

    - Notification of acceptance: May 10, 2005

    - Submission of camera-ready copy: May 17, 2005

    - Workshop: June 29, 2005

    ORGANIZATION

    Chair and contact person:

          Eric Ringger
          Microsoft Research
          One Microsoft Way
          Redmond, WA 98052 USA
          ringger AT microsoft DOT com

    Program Committee:

    - Simon Corston-Oliver, Microsoft Research, USA
    - Kevin Duh, University of Washington, USA
    - Matthew Richardson, Microsoft Research, USA
    - Oren Etzioni, University of Washington, USA
    - Andrew McCallum, University of Massachusetts at Amherst, USA
    - Dan Bikel, IBM Research, USA
    - Olac Fuentes, INAOE, Mexico
    - Chris Manning, Stanford University, USA
    - Kristina Toutanova, Stanford University, USA
    - Hideki Isozaki, NTT Communication Science Laboratories, Japan
    - Caroline Sporleder, University of Edinburgh, UK



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