This paper presents a quantitative fine-grained manual evaluation approach to comparing the performance of different machine translation (MT) systems. We build upon the well-established multidimensional quality metrics (MQM) error taxonomy and implement a novel method that assesses whether the differences in performance for MQM error types between different MT systems are statistically significant. We conduct a case study for English-to-Croatian, a language direction that involves translating into a morphologically rich language, for which we compare three MT systems belonging to different paradigms: pure phrase-based, factored phrase-based and neural. First, we design an MQM-compliant error taxonomy tailored to the relevant linguistic phen...
This research presents a fine-grained human evaluation to compare the Transformer and recurrent appr...
MT is becoming a powerful tool for professional translators, language service providers and common u...
This paper explores the possibility of applying Machine Learning for Machine Translation evaluation
This paper presents a quantitative fine-grained manual evaluation approach to comparing the performa...
This paper presents a quantitative fine-grained manual evaluation approach to comparing the performa...
This paper presents a quantitative fine-grained manual evaluation approach to comparing the performa...
This research compares two approaches to statistical machine translation - pure phrasebased and fac...
This work was supported by the Spanish Ministry of Science, Innovation and Universities (MCIU) (RTI...
Within the field of Statistical Machine Translation (SMT), the neural approach (NMT) has recently em...
Abstract Human translators are the key to evaluating machine translation (MT) quality and also to ad...
This article reports a multifaceted comparison between statistical and neural machine translation (...
Machine translation is increasingly becoming a hot research topic in information and communication s...
This article reports a multifaceted comparison between statistical and neural machine translation (...
Neural machine translation (NMT), a relatively new language technology, has quickly taken over the p...
This study is focused on the comparison of phrase-based statistical machine translation (SMT) system...
This research presents a fine-grained human evaluation to compare the Transformer and recurrent appr...
MT is becoming a powerful tool for professional translators, language service providers and common u...
This paper explores the possibility of applying Machine Learning for Machine Translation evaluation
This paper presents a quantitative fine-grained manual evaluation approach to comparing the performa...
This paper presents a quantitative fine-grained manual evaluation approach to comparing the performa...
This paper presents a quantitative fine-grained manual evaluation approach to comparing the performa...
This research compares two approaches to statistical machine translation - pure phrasebased and fac...
This work was supported by the Spanish Ministry of Science, Innovation and Universities (MCIU) (RTI...
Within the field of Statistical Machine Translation (SMT), the neural approach (NMT) has recently em...
Abstract Human translators are the key to evaluating machine translation (MT) quality and also to ad...
This article reports a multifaceted comparison between statistical and neural machine translation (...
Machine translation is increasingly becoming a hot research topic in information and communication s...
This article reports a multifaceted comparison between statistical and neural machine translation (...
Neural machine translation (NMT), a relatively new language technology, has quickly taken over the p...
This study is focused on the comparison of phrase-based statistical machine translation (SMT) system...
This research presents a fine-grained human evaluation to compare the Transformer and recurrent appr...
MT is becoming a powerful tool for professional translators, language service providers and common u...
This paper explores the possibility of applying Machine Learning for Machine Translation evaluation