Shyamsundar Jayaraman


2005

pdf
Multi-Engine Machine Translation Guided by Explicit Word Matching
Shyamsundar Jayaraman | Alon Lavie
Proceedings of the ACL Interactive Poster and Demonstration Sessions

pdf
Multi-engine machine translation guided by explicit word matching
Shyamsundar Jayaraman | Alon Lavie
Proceedings of the 10th EAMT Conference: Practical applications of machine translation

2004

pdf
The significance of recall in automatic metrics for MT evaluation
Alon Lavie | Kenji Sagae | Shyamsundar Jayaraman
Proceedings of the 6th Conference of the Association for Machine Translation in the Americas: Technical Papers

Recent research has shown that a balanced harmonic mean (F1 measure) of unigram precision and recall outperforms the widely used BLEU and NIST metrics for Machine Translation evaluation in terms of correlation with human judgments of translation quality. We show that significantly better correlations can be achieved by placing more weight on recall than on precision. While this may seem unexpected, since BLEU and NIST focus on n-gram precision and disregard recall, our experiments show that correlation with human judgments is highest when almost all of the weight is assigned to recall. We also show that stemming is significantly beneficial not just to simpler unigram precision and recall based metrics, but also to BLEU and NIST.