PropBank Annotation of Multilingual Light Verb Constructions
LAW IV '10 Proceedings of the Fourth Linguistic Annotation Workshop(2010)
University of Colorado at Boulder | University of Illinois at Urbana-Champaign | Brandeis University
Abstract
In this paper, we have addressed the task of PropBank annotation of light verb constructions, which like multi-word expressions pose special problems. To arrive at a solution, we have evaluated 3 different possible methods of annotation. The final method involves three passes: (1) manual identification of a light verb construction, (2) annotation based on the light verb construction's Frame File, and (3) a deterministic merging of the first two passes. We also discuss how in various languages the light verb constructions are identified and can be distinguished from the non-light verb word groupings.
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Key words
light verb construction,non-light verb word grouping,PropBank annotation,Frame File,different possible method,final method,manual identification,multi-word expression,special problem,various language,multilingual light verb construction
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