Authors
Ryan McDonald, Fernando Pereira, Kiril Ribarov, Jan Hajic
Publication date
2005/10
Conference
Proceedings of human language technology conference and conference on empirical methods in natural language processing
Pages
523-530
Description
We formalize weighted dependency parsing as searching for maximum spanning trees (MSTs) in directed graphs. Using this representation, the parsing algorithm of Eisner (1996) is sufficient for searching over all projective trees in O (n3) time. More surprisingly, the representation is extended naturally to non-projective parsing using Chu-Liu-Edmonds (Chu and Liu, 1965; Edmonds, 1967) MST algorithm, yielding an O (n2) parsing algorithm. We evaluate these methods on the Prague Dependency Treebank using online large-margin learning techniques (Crammer et al., 2003; McDonald et al., 2005) and show that MST parsing increases efficiency and accuracy for languages with non-projective dependencies.
Total citations
200620072008200920102011201220132014201520162017201820192020202120222023202440475788878894749688856957555344293010
Scholar articles
R McDonald, F Pereira, K Ribarov, J Hajic - … of human language technology conference and …, 2005