Word Sense Disambiguation and Semantic Disambiguation for Construction Types in Deep Processing Grammars
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چکیده
The paper presents advances in the use of semantic features and interlingua relations for word sense disambiguation (WSD) as part of unification-based deep processing grammars. Formally we present an extension of Minimal Recursion Semantics, introducing sortal specifications as well as linterlingua semantic relations as a means of semantic decomposition.
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تاریخ انتشار 2006