We present a pairwise learning-to-rank approach to machine translation evalua- tion that learns to differentiate better from worse translations in the context of a given reference. We integrate several layers of linguistic information encapsulated in tree-based structures, making use of both the reference and the system output simul- taneously, thus bringing our ranking closer to how humans evaluate translations. Most importantly, instead of deciding upfront which types of features are important, we use the learning framework of preference re-ranking kernels to learn the features au- tomatically. The evaluation results show that learning in the proposed framework yields better correlation with humans than computing the direct similarity over the same type of structures. Also, we show our structural kernel learning (SKL) can be a general framework for MT evaluation, in which syntactic and semantic informa- tion can be naturally incorporated.

Learning to Differentiate Better from Worse Translations

Moschitti, Alessandro;
2014-01-01

Abstract

We present a pairwise learning-to-rank approach to machine translation evalua- tion that learns to differentiate better from worse translations in the context of a given reference. We integrate several layers of linguistic information encapsulated in tree-based structures, making use of both the reference and the system output simul- taneously, thus bringing our ranking closer to how humans evaluate translations. Most importantly, instead of deciding upfront which types of features are important, we use the learning framework of preference re-ranking kernels to learn the features au- tomatically. The evaluation results show that learning in the proposed framework yields better correlation with humans than computing the direct similarity over the same type of structures. Also, we show our structural kernel learning (SKL) can be a general framework for MT evaluation, in which syntactic and semantic informa- tion can be naturally incorporated.
2014
Proceedings of the 2014 Conference on Empirical Methods in Natural Language Processing (EMNLP)
Francisco Guzm´an, Shafiq Joty, Llu`ıs M`arquez, Alessandro Moschitti, Preslav Nakov and Massimo Nicosia
Doha, Qatar
Association for Computational Linguistics
9781937284961
Francisco, Guzm´an; Shafiq, Joty; Llu`ıs, M`arquez; Moschitti, Alessandro; Preslav, Nakov; Massimo, Nicosia
File in questo prodotto:
Non ci sono file associati a questo prodotto.

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/101809
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus ND
  • ???jsp.display-item.citation.isi??? ND
  • OpenAlex ND
social impact