Semantic Tagging And NLP Applications
نویسندگان
چکیده
There are hardly any an_notation schemes including semantic information, with the exception of Princeton WordNet (which will be extended by EuroWordNet for European languages). But some projects already addressed this topic, like FraCaS (Framework for Computational Semantics), or are starting to do this, like DIET (Diagnostic and Evaluation Tools for NL Applications, an extension of the TSNLP framework, see Lehmann et al., Coling 96) 1.
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