Exploiting the Contribution of Morphological Information to Parsing: the BASQUE TEAM system in the SPRML'2013 Shared Task
نویسندگان
چکیده
This paper presents a dependency parsing system, presented as BASQUE TEAM at the SPMRL’2013 Shared Task, based on the analysis of each morphological feature of the languages. Once the specific relevance of each morphological feature is calculated, this system uses the most significant of them to create a series of analyzers using two freely available and state of the art dependency parsers, MaltParser and Mate. Finally, the system will combine previously achieved parses using a voting approach.
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