CMU-CS-03-216
Computer Science Department
School of Computer Science, Carnegie Mellon University



CMU-CS-03-216

Modeling Syntax for Parsing and Translation

Peter Venable

December 2003

Ph.D. Thesis

CMU-CS-03-216.ps
CMU-CS-03-216.ps.gz
CMU-CS-03-216.pdf


Keywords: Statistical, syntax, parsing, translation


Syntactic structure is an important component of natural language utterances, for both form and content. Therefore, a variety of applications can benefit from the integration of syntax into their statistical models of language. In this thesis, two new syntax-based models are presented, along with their training algorithms: a monolingual generative model of sentence structure, and a model of the relationship between the structure of a sentence in one language and the structure of its translation into another language. After these models are trained and tested on the respective tasks of monolingual parsing and word-level bilingual corpus alignment, they are demonstrated in two additional applications. First, a new statistical parser is automatically induced for a language in which none was available, using a bilingual corpus. Second, a statistical translation system is augmented with syntax-based models. Thus the contributions of this thesis include: a statistical parsing system; a bilingual parsing system, which infers a structural relationship between two languages using a bilingual corpus; a method for automatically building a parser for a language where no parser is available; and a translation model that incorporates phrase structure.

130 pages


Return to: SCS Technical Report Collection
School of Computer Science homepage

This page maintained by [email protected]