A Transition-Based System for Joint Part-of-Speech Tagging and Labeled Non-Projective Dependency Parsing 论文

2012引用 229
Natural Language Processing TechniquesTopic ModelingSpeech and dialogue systems

摘要

Most current dependency parsers presuppose that input words have been morphologically disambiguated using a part-of-speech tagger before parsing begins. We present a transitionbased system for joint part-of-speech tagging and labeled dependency parsing with nonprojective trees. Experimental evaluation on Chinese, Czech, English and German shows consistent improvements in both tagging and parsing accuracy when compared to a pipeline system, which lead to improved state-of-theart results for all languages. 1