Abstract. Automatic metrics for the evaluation of machine translation (MT) compute scores that characterize globally certain aspects of MT quality such as adequacy and fluency. This paper introduces a reference-based metric that is focused on a particular class of function words, namely discourse connectives, of particular importance for text structuring, and rather challenging for MT. To measure the accuracy of connective translation (ACT), the metric relies on automatic word-level alignment between a source sentence and respectively the reference and candidate translations, along with other heuristics for comparing translations of discourse connectives. Using a dictionary of equivalents, the translations are scored automatically, or, for ...
The success of Transformer architecture has seen increased interest in machine translation (MT). The...
Automatic Machine Translation (MT) evaluation metrics have traditionally been evaluated by the corre...
We describe TINE, a new automatic evalua-tion metric for Machine Translation that aims at assessing ...
Automatic metrics for the evaluation of machine translation (MT) compute scores that characterize gl...
This paper gives a detailed description of the ACT (Accuracy of Connective Trans-lation) metric, a r...
This paper gives a detailed description of the ACT (Accuracy of Connective Translation) metric, a re...
Discourse connectives can often signal multiple discourse relations, depending on their context. The...
This article shows how the automatic dis-ambiguation of discourse connectives can improve Statistica...
Automatic machine translation evaluation was crucial for the rapid development of machine translatio...
Discourse connectives can often signal multiple discourse relations, depending on their context. The...
The neural revolution in machine translation has made it easier to model larger contexts beyond the...
We present a comparison of automatic metrics against human evaluations of translation quality in sev...
Explicit discourse connectives in a source language text are not always translated to comparable wor...
In an attempt to improve overall translation quality, there has been an increasing focus on integrat...
This paper reports the results of an experiment in machine translation (MT) evaluation, designed to ...
The success of Transformer architecture has seen increased interest in machine translation (MT). The...
Automatic Machine Translation (MT) evaluation metrics have traditionally been evaluated by the corre...
We describe TINE, a new automatic evalua-tion metric for Machine Translation that aims at assessing ...
Automatic metrics for the evaluation of machine translation (MT) compute scores that characterize gl...
This paper gives a detailed description of the ACT (Accuracy of Connective Trans-lation) metric, a r...
This paper gives a detailed description of the ACT (Accuracy of Connective Translation) metric, a re...
Discourse connectives can often signal multiple discourse relations, depending on their context. The...
This article shows how the automatic dis-ambiguation of discourse connectives can improve Statistica...
Automatic machine translation evaluation was crucial for the rapid development of machine translatio...
Discourse connectives can often signal multiple discourse relations, depending on their context. The...
The neural revolution in machine translation has made it easier to model larger contexts beyond the...
We present a comparison of automatic metrics against human evaluations of translation quality in sev...
Explicit discourse connectives in a source language text are not always translated to comparable wor...
In an attempt to improve overall translation quality, there has been an increasing focus on integrat...
This paper reports the results of an experiment in machine translation (MT) evaluation, designed to ...
The success of Transformer architecture has seen increased interest in machine translation (MT). The...
Automatic Machine Translation (MT) evaluation metrics have traditionally been evaluated by the corre...
We describe TINE, a new automatic evalua-tion metric for Machine Translation that aims at assessing ...