Author:
NIVRE JOAKIM,HALL JOHAN,NILSSON JENS,CHANEV ATANAS,ERYİGİT GÜLŞEN,KÜBLER SANDRA,MARINOV SVETOSLAV,MARSI ERWIN
Abstract
Parsing unrestricted text is useful for many language technology applications but requires parsing methods that are both robust and efficient. MaltParser is a language-independent system for data-driven dependency parsing that can be used to induce a parser for a new language from a treebank sample in a simple yet flexible manner. Experimental evaluation confirms that MaltParser can achieve robust, efficient and accurate parsing for a wide range of languages without language-specific enhancements and with rather limited amounts of training data.
Publisher
Cambridge University Press (CUP)
Subject
Artificial Intelligence,Linguistics and Language,Language and Linguistics,Software
Cited by
205 articles.
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