1. What are the contributions in "Example-based machine translation based on tree-string correspondence and statistical generation" ?
This paper describes an example-based machine translation ( EBMT ) method based on tree-string correspondence ( TSC ) and statistical generation.
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2. What have the authors stated for future works in "Example-based machine translation based on tree-string correspondence and statistical generation" ?
In future work, the authors expect that better translation could be achieved by adding more features to the generation model.. Furthermore, the authors will investigate the possibility of leveraging their TSC method into the SMT framework.. The authors will also try to optimize the weights in the generation model, using methods such as minimum error-rate training described in Och ( 2003 ).
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3. What is the effect of the three feature functions in the generation model?
Component evaluation indicates that the three feature functions in the generation model effectively improve the translation fragment selection and combination.
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4. What is the probability of encountering an instance of Ci in the corpus?
Ci is the concept that fi belongs to, C0 is the nearest common ancestor in the semantic hierarchy that subsumes both C1 and C2, and p(Ci) is the probability of encountering an instance of Ci in the corpus.
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