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2nd Linguistic Annotation Workshop

LAWII 2008

Submission Page


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Keywords/Topics:

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Annotation scheme design and/or development
Representation formats/structures for linguistic annotations
Interoperability, harmonization
Systems and frameworks for annotation
Standards and consensus building
Machine learning techniques for automating annotation
Comparison and evaluation of annotation systems/schemes
Innovative exploitation of annotated language data
 
 



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