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Semantic Role Parsing: Adding Semantic Structure to Unstructured Text
Melbourne, Florida November 19-November 22
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICDM.2003.1250994Third IEEE International Conference o ...
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Sameer Pradhan, University of Colorado, Boulder
Kadri Hacioglu, University of Colorado, Boulder
Wayne Ward, University of Colorado, Boulder
James H. Martin, University of Colorado, Boulder
Daniel Jurafsky, University of Colorado, Boulder
There is a ever-growing need to add structure in the form of semantic markup to the huge amounts of unstructured text data now available. We present the technique of shallow semantic parsing, the process of assigning a simple WHO did WHAT to WHOM, etc., structure to sentences in text, as a useful tool in achieving this goal. We formulate the semantic parsing problem as a classification problem using Support Vector Machines. Using a hand-labeled training set and a set of features drawn from earlier work together with some feature enhancements, we demonstrate a system that performs better than all other published results on shallow semantic parsing.
Citation:
Sameer Pradhan, Kadri Hacioglu, Wayne Ward, James H. Martin, Daniel Jurafsky, "Semantic Role Parsing: Adding Semantic Structure to Unstructured Text," icdm, pp.629, Third IEEE International Conference on Data Mining (ICDM'03), 2003
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