Machine Translation Evaluation Metric Based on Dependency Parsing Model

Author(s):  
Hui Yu ◽  
Weizhi Xu ◽  
Shouxun Lin ◽  
Qun Liu
2015 ◽  
Vol 104 (1) ◽  
pp. 17-26
Author(s):  
Miloš Stanojević ◽  
Khalil Sima’an

Abstract We present BEER, an open source implementation of a machine translation evaluation metric. BEER is a metric trained for high correlation with human ranking by using learning-to-rank training methods. For evaluation of lexical accuracy it uses sub-word units (character n-grams) while for measuring word order it uses hierarchical representations based on PETs (permutation trees). During the last WMT metrics tasks, BEER has shown high correlation with human judgments both on the sentence and the corpus levels. In this paper we will show how BEER can be used for (i) full evaluation of MT output, (ii) isolated evaluation of word order and (iii) tuning MT systems.


Author(s):  
Samiksha Tripathi ◽  
Vineet Kansal

Machine Translation (MT) evaluation metrics like BiLingual Evaluation Understudy (BLEU) and Metric for Evaluation of Translation with Explicit Ordering (METEOR) are known to have poor performance for word-order and morphologically rich languages. Application of linguistic knowledge to evaluate MTs for morphologically rich language like Hindi as a target language, is shown to be more effective and accurate [S. Tripathi and V. Kansal, Using linguistic knowledge for machine translation evaluation with Hindi as a target language, Comput. Sist.21(4) (2017) 717–724]. Leveraging the recent progress made in the domain of word vector and sentence vector embedding [T. Mikolov and J. Dean, Distributed representations of words and phrases and their compositionality, Adv. Neural Inf. Process. Syst. 2 (2013) 3111–3119], authors have trained a large corpus of pre-processed Hindi text ([Formula: see text] million tokens) for obtaining the word vectors and sentence vector embedding for Hindi. The training has been performed on high end system configuration utilizing Google Cloud platform resources. This sentence vector embedding is further used to corroborate the findings through linguistic knowledge in evaluation metric. For morphologically rich language as target, evaluation metric of MT systems is considered as an optimal solution. In this paper, authors have demonstrated that MT evaluation using sentence embedding-based approach closely mirrors linguistic evaluation technique. The relevant codes used to generate the vector embedding for Hindi have been uploaded on code sharing platform Github. a


Author(s):  
Oliver Czulo ◽  
◽  
Tiago Timponi Torrent ◽  
Ely Edison da Silva Matos ◽  
Alexandre Diniz da Costa ◽  
...  

2021 ◽  
Author(s):  
Vânia Mendonça ◽  
Ricardo Rei ◽  
Luisa Coheur ◽  
Alberto Sardinha ◽  
Ana Lúcia Santos

2020 ◽  
Author(s):  
Wei Zhao ◽  
Goran Glavaš ◽  
Maxime Peyrard ◽  
Yang Gao ◽  
Robert West ◽  
...  

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