Improving Dependency Parsing with Semantic Classes

Eneko Agirre1,  Kepa Bengoetxea1,  Koldo Gojenola1,  Joakim Nivre2
1University of the Basque Country, 2University of Uppsala


Abstract

This paper presents the introduction of WordNet semantic classes in a dependency parser, obtaining improvements on the full Penn Treebank for the first time. We tried different combinations of some basic se-mantic classes and word sense disambigua-tion algorithms. Our experiments show that selecting the adequate combination of se-mantic features on development data is key for success. Given the basic nature of the semantic classes and word sense disam-biguation algorithms used, we think there is ample room for future improvements.




Full paper: http://www.aclweb.org/anthology/P/P11/P11-2123.pdf