The Alignment Template Approach to Statistical Machine Translation
Google (United States) · RWTH Aachen University
Abstract
A phrase-based statistical machine translation approach — the alignment template approach — is described. This translation approach allows for general many-to-many relations between words. Thereby, the context of words is taken into account in the translation model, and local changes in word order from source to target language can be learned explicitly. The model is described using a log-linear modeling approach, which is a generalization of the often used source-channel approach. Thereby, the model is easier to extend than classical statistical machine translation systems. We describe in detail the process for learning phrasal translations, the feature functions used, and the search algorithm. The evaluation…
Citation impact
- FWCI
- 80.47
- Percentile
- 100%
- References
- 49
Authors
2Topics & keywords
- Computer science
- NIST
- Machine translation
- Evaluation of machine translation
- Natural language processing
- Example-based machine translation
- Artificial intelligence
- Phrase