We develop a top performing model for automatic, accurate, and language independent prediction of sentence-level statistical machine translation (SMT) quality with or without looking at the translation outputs. We derive various feature functions measuring the closeness of a given test sentence to the training data and the difficulty of translating the sentence. We describe \texttt{mono} feature functions that are based on statistics of only one side of the parallel training corpora and \texttt{duo} feature functions that incorporate statistics involving both source and target sides of the training data. Overall, we describe novel, language independent, and SMT system extrinsic features for predicting the SMT performance, which also r...
Research on translation quality annotation and estimation usually makes use of stan-dard language, s...
We introduce referential translation machines (RTM) for quality estimation of translation outputs. R...
International audienceThis paper addresses the automatic quality estimation of spoken language trans...
We develop a top performing model for automatic, accurate, and language independent prediction of se...
We investigate the problem of predicting the quality of sentences produced by ma-chine translation s...
Abstract We use referential translation machines (RTMs) for predicting translation performance. RTMs...
We perform a systematic analysis of the effectiveness of features for the problem of predicting the ...
Research on translation quality annotation and estimation usually makes use of standard language, so...
We use referential translation machines (RTMs) for quality estimation of transla-tion outputs. RTMs ...
Most evaluation metrics for machine translation (MT) require reference translations for each sentenc...
International audienceThis paper proposes some ideas to build effective estimators, which predict th...
We use referential translation machines (RTMs) for predicting translation performance. RTMs pioneer ...
We use referential translation machines (RTM) for quality estimation of translation outputs. RTMs ar...
Abstract We perform a systematic analysis on the effectiveness of features for the problem of predic...
This paper describes the submission of the UGENT-LT3 SCATE system to the WMT15 Shared Task on Qualit...
Research on translation quality annotation and estimation usually makes use of stan-dard language, s...
We introduce referential translation machines (RTM) for quality estimation of translation outputs. R...
International audienceThis paper addresses the automatic quality estimation of spoken language trans...
We develop a top performing model for automatic, accurate, and language independent prediction of se...
We investigate the problem of predicting the quality of sentences produced by ma-chine translation s...
Abstract We use referential translation machines (RTMs) for predicting translation performance. RTMs...
We perform a systematic analysis of the effectiveness of features for the problem of predicting the ...
Research on translation quality annotation and estimation usually makes use of standard language, so...
We use referential translation machines (RTMs) for quality estimation of transla-tion outputs. RTMs ...
Most evaluation metrics for machine translation (MT) require reference translations for each sentenc...
International audienceThis paper proposes some ideas to build effective estimators, which predict th...
We use referential translation machines (RTMs) for predicting translation performance. RTMs pioneer ...
We use referential translation machines (RTM) for quality estimation of translation outputs. RTMs ar...
Abstract We perform a systematic analysis on the effectiveness of features for the problem of predic...
This paper describes the submission of the UGENT-LT3 SCATE system to the WMT15 Shared Task on Qualit...
Research on translation quality annotation and estimation usually makes use of stan-dard language, s...
We introduce referential translation machines (RTM) for quality estimation of translation outputs. R...
International audienceThis paper addresses the automatic quality estimation of spoken language trans...