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Machine Translation (old)
Statistical Machine Translation
Machine Translation
The Statistical Paradigm
Dimitris Mavroeidis1
1Department of Embodied Language Processing
Cognitive Systems Research Institute
Athens, 29/05/2015
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Outline
Machine Translation (old)
Rule-based
Example-based
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Outline
Machine Translation (old)
Rule-based
Example-based
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Main aspects
Lexicons
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Main aspects
Lexicons
Morphological analysers
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Main aspects
Lexicons
Morphological analysers
Syntax parsers
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Main aspects
Lexicons
Morphological analysers
Syntax parsers
Morphological generators
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Main aspects
Lexicons
Morphological analysers
Syntax parsers
Morphological generators
Grammars
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Main aspects
Lexicons
Morphological analysers
Syntax parsers
Morphological generators
Grammars
...
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Advantages
Only lexica & rules, No parallel documents.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Advantages
Only lexica & rules, No parallel documents.
Any domain, any genre.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Advantages
Only lexica & rules, No parallel documents.
Any domain, any genre.
High quality translation!
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Challenges
Good lexica are scarce.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Challenges
Good lexica are scarce.
Manually added linguistic information.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Challenges
Good lexica are scarce.
Manually added linguistic information.
Not good with: ambiguity, idioms
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Challenges
Good lexica are scarce.
Manually added linguistic information.
Not good with: ambiguity, idioms
Very slow to deploy.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Challenges
Good lexica are scarce.
Manually added linguistic information.
Not good with: ambiguity, idioms
Very slow to deploy.
Needs many resources.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Rule-based
Challenges
Good lexica are scarce.
Manually added linguistic information.
Not good with: ambiguity, idioms
Very slow to deploy.
Needs many resources.
Very Expensive!
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Outline
Machine Translation (old)
Rule-based
Example-based
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Example-based
Main aspects
Parallel documents.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Example-based
Main aspects
Parallel documents.
Learn phrase correspondence.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Example-based
Advantages
Catches sub-language phenomena (like phrasal verbs).
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Example-based
Advantages
Catches sub-language phenomena (like phrasal verbs).
Good for technical documents.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Example-based
Challenges
Highly context-dependent.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Rule-based
Example-based
Example-based
Challenges
Highly context-dependent.
Limited algorithms.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Outline
Machine Translation (old)
Rule-based
Example-based
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Inspiration: Rosetta Stone (196 BC)
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Inspiration: Rosetta Stone (196 BC)
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Outline
Machine Translation (old)
Rule-based
Example-based
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Model 1
Lexical Model
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Model 1
Lexical Model
p(e, α|f ) =
(lf + 1)le
le
j=1
t(ej |fα(j))
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Model 2
Alignment Model
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Model 2
Alignment Model
p(e, α|f ) =
le
j=1
t(ej |fα(j)) α(α(j)|j, le, lf )
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Models 1-2
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Models 1-2
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Model 3
Fertility Model: The number of target-language words generated
by a source-language word
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Model 4
Distortion Model: Better reordering
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Models 1-4
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Models 1-4
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Model 5
Vacant position tracker Model: Fixes problems of models 1-4:
Eliminates impossible translations’ probabilities.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Technical stuff
IBM-Model 5
Vacant position tracker Model: Fixes problems of models 1-4:
Eliminates impossible translations’ probabilities.
Eliminates the possibility of multiple translation per position.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Outline
Machine Translation (old)
Rule-based
Example-based
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Advanced models
Phrase-based
Translate sequences of words (phrases) instead of words.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Advanced models
Phrase-based
Translate sequences of words (phrases) instead of words.
Current state-of-the-art.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Advanced models
Phrase-based
Translate sequences of words (phrases) instead of words.
Current state-of-the-art.
Better quality than IBM Models.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Advanced models
Phrase-based
Translate sequences of words (phrases) instead of words.
Current state-of-the-art.
Better quality than IBM Models.
Results heavily dependent on training data.
Tree-based
Addition of syntactic information in Statistical Machine
Translation.
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Advanced models
Phrase-based
Translate sequences of words (phrases) instead of words.
Current state-of-the-art.
Better quality than IBM Models.
Results heavily dependent on training data.
Tree-based
Addition of syntactic information in Statistical Machine
Translation.
Factored
Addition of any kind of information (syntactic, linguistic,
morphologic, etc.)Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Advanced models
Phrase-based
Translate sequences of words (phrases) instead of words.
Current state-of-the-art.
Better quality than IBM Models.
Results heavily dependent on training data.
Tree-based
Addition of syntactic information in Statistical Machine
Translation.
Factored
Addition of any kind of information (syntactic, linguistic,
morphologic, etc.)Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Outline
Machine Translation (old)
Rule-based
Example-based
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Dimitris Mavroeidis Machine Translation
Machine Translation (old)
Statistical Machine Translation
Main Ideas
IBM Models
Advanced SMT Models
Statistical Machine Translation
Hands-On
Hands-On with ”GIZA++” and ”Moses” statistical translation
systems
Dimitris Mavroeidis Machine Translation

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Statistical MT Presentation 20150529

  • 1. Machine Translation (old) Statistical Machine Translation Machine Translation The Statistical Paradigm Dimitris Mavroeidis1 1Department of Embodied Language Processing Cognitive Systems Research Institute Athens, 29/05/2015 Dimitris Mavroeidis Machine Translation
  • 2. Machine Translation (old) Statistical Machine Translation Outline Machine Translation (old) Rule-based Example-based Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Dimitris Mavroeidis Machine Translation
  • 3. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Outline Machine Translation (old) Rule-based Example-based Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Dimitris Mavroeidis Machine Translation
  • 4. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Main aspects Lexicons Dimitris Mavroeidis Machine Translation
  • 5. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Main aspects Lexicons Morphological analysers Dimitris Mavroeidis Machine Translation
  • 6. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Main aspects Lexicons Morphological analysers Syntax parsers Dimitris Mavroeidis Machine Translation
  • 7. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Main aspects Lexicons Morphological analysers Syntax parsers Morphological generators Dimitris Mavroeidis Machine Translation
  • 8. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Main aspects Lexicons Morphological analysers Syntax parsers Morphological generators Grammars Dimitris Mavroeidis Machine Translation
  • 9. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Main aspects Lexicons Morphological analysers Syntax parsers Morphological generators Grammars ... Dimitris Mavroeidis Machine Translation
  • 10. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Advantages Only lexica & rules, No parallel documents. Dimitris Mavroeidis Machine Translation
  • 11. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Advantages Only lexica & rules, No parallel documents. Any domain, any genre. Dimitris Mavroeidis Machine Translation
  • 12. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Advantages Only lexica & rules, No parallel documents. Any domain, any genre. High quality translation! Dimitris Mavroeidis Machine Translation
  • 13. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Challenges Good lexica are scarce. Dimitris Mavroeidis Machine Translation
  • 14. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Challenges Good lexica are scarce. Manually added linguistic information. Dimitris Mavroeidis Machine Translation
  • 15. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Challenges Good lexica are scarce. Manually added linguistic information. Not good with: ambiguity, idioms Dimitris Mavroeidis Machine Translation
  • 16. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Challenges Good lexica are scarce. Manually added linguistic information. Not good with: ambiguity, idioms Very slow to deploy. Dimitris Mavroeidis Machine Translation
  • 17. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Challenges Good lexica are scarce. Manually added linguistic information. Not good with: ambiguity, idioms Very slow to deploy. Needs many resources. Dimitris Mavroeidis Machine Translation
  • 18. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Rule-based Challenges Good lexica are scarce. Manually added linguistic information. Not good with: ambiguity, idioms Very slow to deploy. Needs many resources. Very Expensive! Dimitris Mavroeidis Machine Translation
  • 19. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Outline Machine Translation (old) Rule-based Example-based Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Dimitris Mavroeidis Machine Translation
  • 20. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Example-based Main aspects Parallel documents. Dimitris Mavroeidis Machine Translation
  • 21. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Example-based Main aspects Parallel documents. Learn phrase correspondence. Dimitris Mavroeidis Machine Translation
  • 22. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Example-based Advantages Catches sub-language phenomena (like phrasal verbs). Dimitris Mavroeidis Machine Translation
  • 23. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Example-based Advantages Catches sub-language phenomena (like phrasal verbs). Good for technical documents. Dimitris Mavroeidis Machine Translation
  • 24. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Example-based Challenges Highly context-dependent. Dimitris Mavroeidis Machine Translation
  • 25. Machine Translation (old) Statistical Machine Translation Rule-based Example-based Example-based Challenges Highly context-dependent. Limited algorithms. Dimitris Mavroeidis Machine Translation
  • 26. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Outline Machine Translation (old) Rule-based Example-based Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Dimitris Mavroeidis Machine Translation
  • 27. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Inspiration: Rosetta Stone (196 BC) Dimitris Mavroeidis Machine Translation
  • 28. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Inspiration: Rosetta Stone (196 BC) Dimitris Mavroeidis Machine Translation
  • 29. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Outline Machine Translation (old) Rule-based Example-based Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Dimitris Mavroeidis Machine Translation
  • 30. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Model 1 Lexical Model Dimitris Mavroeidis Machine Translation
  • 31. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Model 1 Lexical Model p(e, α|f ) = (lf + 1)le le j=1 t(ej |fα(j)) Dimitris Mavroeidis Machine Translation
  • 32. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Model 2 Alignment Model Dimitris Mavroeidis Machine Translation
  • 33. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Model 2 Alignment Model p(e, α|f ) = le j=1 t(ej |fα(j)) α(α(j)|j, le, lf ) Dimitris Mavroeidis Machine Translation
  • 34. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Models 1-2 Dimitris Mavroeidis Machine Translation
  • 35. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Models 1-2 Dimitris Mavroeidis Machine Translation
  • 36. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Model 3 Fertility Model: The number of target-language words generated by a source-language word Dimitris Mavroeidis Machine Translation
  • 37. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Model 4 Distortion Model: Better reordering Dimitris Mavroeidis Machine Translation
  • 38. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Models 1-4 Dimitris Mavroeidis Machine Translation
  • 39. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Models 1-4 Dimitris Mavroeidis Machine Translation
  • 40. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Model 5 Vacant position tracker Model: Fixes problems of models 1-4: Eliminates impossible translations’ probabilities. Dimitris Mavroeidis Machine Translation
  • 41. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Technical stuff IBM-Model 5 Vacant position tracker Model: Fixes problems of models 1-4: Eliminates impossible translations’ probabilities. Eliminates the possibility of multiple translation per position. Dimitris Mavroeidis Machine Translation
  • 42. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Outline Machine Translation (old) Rule-based Example-based Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Dimitris Mavroeidis Machine Translation
  • 43. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Advanced models Phrase-based Translate sequences of words (phrases) instead of words. Dimitris Mavroeidis Machine Translation
  • 44. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Advanced models Phrase-based Translate sequences of words (phrases) instead of words. Current state-of-the-art. Dimitris Mavroeidis Machine Translation
  • 45. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Advanced models Phrase-based Translate sequences of words (phrases) instead of words. Current state-of-the-art. Better quality than IBM Models. Dimitris Mavroeidis Machine Translation
  • 46. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Advanced models Phrase-based Translate sequences of words (phrases) instead of words. Current state-of-the-art. Better quality than IBM Models. Results heavily dependent on training data. Tree-based Addition of syntactic information in Statistical Machine Translation. Dimitris Mavroeidis Machine Translation
  • 47. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Advanced models Phrase-based Translate sequences of words (phrases) instead of words. Current state-of-the-art. Better quality than IBM Models. Results heavily dependent on training data. Tree-based Addition of syntactic information in Statistical Machine Translation. Factored Addition of any kind of information (syntactic, linguistic, morphologic, etc.)Dimitris Mavroeidis Machine Translation
  • 48. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Advanced models Phrase-based Translate sequences of words (phrases) instead of words. Current state-of-the-art. Better quality than IBM Models. Results heavily dependent on training data. Tree-based Addition of syntactic information in Statistical Machine Translation. Factored Addition of any kind of information (syntactic, linguistic, morphologic, etc.)Dimitris Mavroeidis Machine Translation
  • 49. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Outline Machine Translation (old) Rule-based Example-based Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Dimitris Mavroeidis Machine Translation
  • 50. Machine Translation (old) Statistical Machine Translation Main Ideas IBM Models Advanced SMT Models Statistical Machine Translation Hands-On Hands-On with ”GIZA++” and ”Moses” statistical translation systems Dimitris Mavroeidis Machine Translation