Abstract
Translation systems are complex, and most metrics do little to pinpoint causes of error or isolate system differences. We use a simple technique to discover induction errors, which occur when good translations are absent from model search spaces. Our results show that a common pruning heuristic drastically increases induction error, and also strongly suggest that the search spaces of phrase-based and hierarchical phrase-based models are highly overlapping despite the well known structural differences.
Cite
CITATION STYLE
Auli, M., Lopez, A., Hoang, H., & Koehn, P. (2009). A Systematic Analysis of Translation Model Search Spaces. In EACL 2009 - 4th Workshop on Statistical Machine Translation, Proceedings of theWorkshop (pp. 224–232). Association for Computational Linguistics (ACL). https://doi.org/10.3115/1626431.1626475
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