Recently, significant improvements have been achieved in various natural language processing tasks using neural sequence-to-sequence models. While aiming for the best generation quality is important, ultimately it is also necessary to develop models that can assess the quality of their output. In this work, we propose to use the similarity between training and test conditions as a measure for models’ confidence. We investigate methods solely using the similarity as well as methods combining it with the posterior probability. While traditionally only target tokens are annotated with confidence measures, we also investigate methods to annotate source tokens with confidence. By learning an internal alignment model, we can significantly improve...
This article introduces and evaluates several different word-level confidence measures for machine t...
Recently, there has been growth in providers of speech transcription services enabling others to lev...
The thesis introduces the Confidence Measure framework to the parsing world. They are widely used in...
Confidence measures are a practical solution for improving the usefulness of Natural Language Proces...
International audienceSince Bahdanau et al. [1] first introduced attention for neural machine transl...
Confidence Estimation has been extensively used in Speech Recognition and now it is also being appli...
In this paper, we present several confidence measures for (statistical) machine translation. We intr...
Maximum-likelihood estimation (MLE) is widely used in sequence to sequence tasks for model training....
In Natural Language Processing (NLP), it is important to detect the relationship between two sequenc...
This article introduces and evaluates several different word-level confidence measures for ma-chine ...
Since Bahdanau et al. [1] first introduced attention for neural machine translation, most sequence-t...
We describe some high-level approaches to estimating confidence scores for the words output by a spe...
In this paper, we present several confidence measures for (statistical) machine translation. We intr...
In this paper, we present improved word-level confidence measures based on poste-rior probabilities ...
With the advent of deep learning, research in many areas of machine learning is converging towards t...
This article introduces and evaluates several different word-level confidence measures for machine t...
Recently, there has been growth in providers of speech transcription services enabling others to lev...
The thesis introduces the Confidence Measure framework to the parsing world. They are widely used in...
Confidence measures are a practical solution for improving the usefulness of Natural Language Proces...
International audienceSince Bahdanau et al. [1] first introduced attention for neural machine transl...
Confidence Estimation has been extensively used in Speech Recognition and now it is also being appli...
In this paper, we present several confidence measures for (statistical) machine translation. We intr...
Maximum-likelihood estimation (MLE) is widely used in sequence to sequence tasks for model training....
In Natural Language Processing (NLP), it is important to detect the relationship between two sequenc...
This article introduces and evaluates several different word-level confidence measures for ma-chine ...
Since Bahdanau et al. [1] first introduced attention for neural machine translation, most sequence-t...
We describe some high-level approaches to estimating confidence scores for the words output by a spe...
In this paper, we present several confidence measures for (statistical) machine translation. We intr...
In this paper, we present improved word-level confidence measures based on poste-rior probabilities ...
With the advent of deep learning, research in many areas of machine learning is converging towards t...
This article introduces and evaluates several different word-level confidence measures for machine t...
Recently, there has been growth in providers of speech transcription services enabling others to lev...
The thesis introduces the Confidence Measure framework to the parsing world. They are widely used in...