Multi-align: Combining Linguistic and Statistical Techniques to Improve Alignments for Adaptable MT

TitleMulti-align: Combining Linguistic and Statistical Techniques to Improve Alignments for Adaptable MT
Publication TypeBook Chapters
Year of Publication2004
AuthorsAyan N, Dorr BJ, Habash N
EditorFrederking R, Taylor K
Book TitleMachine Translation: From Real Users to ResearchMachine Translation: From Real Users to Research
Series TitleLecture Notes in Computer Science
Volume3265
Pagination17 - 26
PublisherSpringer Berlin / Heidelberg
ISBN Number978-3-540-23300-8
Abstract

An adaptable statistical or hybrid MT system relies heavily on the quality of word-level alignments of real-world data. Statistical alignment approaches provide a reasonable initial estimate for word alignment. However, they cannot handle certain types of linguistic phenomena such as long-distance dependencies and structural differences between languages. We address this issue in Multi-Align, a new framework for incremental testing of different alignment algorithms and their combinations. Our design allows users to tune their systems to the properties of a particular genre/domain while still benefiting from general linguistic knowledge associated with a language pair. We demonstrate that a combination of statistical and linguistically-informed alignments can resolve translation divergences during the alignment process.

URLhttp://dx.doi.org/10.1007/978-3-540-30194-3_3