Statistical phrase-based translation
Southern California University for Professional Studies · University of Southern California
Abstract
We propose a new phrase-based translation model and decoding algorithm that enables us to evaluate and compare several, previously proposed phrase-based translation models. Within our framework, we carry out a large number of experiments to understand better and explain why phrase-based models out-perform word-based models. Our empirical results, which hold for all examined language pairs, suggest that the highest levels of performance can be obtained through relatively simple means: heuristic learning of phrase translations from word-based alignments and lexical weighting of phrase translations. Surprisingly, learning phrases longer than three words and learning phrases from high-accuracy word-level alignment…
Citation impact
- FWCI
- 106.85
- Percentile
- 100%
- References
- 20
Authors
3- PKPhilipp KoehnCorresponding
Southern California University for Professional Studies, University of Southern California
- FJFranz Josef Och
University of Southern California, Southern California University for Professional Studies
- DMDaniel Marcu
Southern California University for Professional Studies, University of Southern California
Topics & keywords
- Phrase
- Computer science
- Natural language processing
- Artificial intelligence
- Word (group theory)
- Machine translation
- Translation (biology)
- Heuristic
- Quality Education