We present a very simple model for text quality assessment based on a deep convolutional neural network, where the only supervision required is one corpus of user-generated text of varying quality, and one contrasting text corpus of consistently high quality. Our model is able to provide local quality assessments in different parts of a text, which allows visual feedback about where potentially problematic parts of the text are located, as well as a way to evaluate which textual features are captured by our model. We evaluate our method on two corpora: a large corpus of manually graded student essays and a longitudinal corpus of language learner written production, and find that the text quality metric learned by our model is a fairly stron...
Abstract Research on language teaching quality has certainly stood out enough to be noticed as the m...
Recently, quality estimation has been attracting increasing interest from machine translation resear...
Zarrieß S, Loth S, Schlangen D. Reading Times Predict the Quality of Generated Text Above and Beyond...
We present a very simple model for text quality assessment based on a deep convolutional neural netw...
© 2020 Aili ShenDocument quality assessment, due to its complexity and subjectivity, requires consid...
Text classification technique is advancing rapidly alongside AI technology, showing signs of maturit...
Evaluating the output of NLG systems is notoriously difficult, and performing assessments of text qu...
Proliferating applications of deep learning, along with the prevalence of large-scale text datasets,...
This paper describes the system submit-ted by the University of Heidelberg to the Shared Task on Wor...
Abstract Using traditional machine learning approaches, there is no single feature engineering solut...
Text quality is a key aspect of overall print quality. Assessing text quality objectively and quanti...
International audienceWe compare the performances of several Multi-Layer Perceptrons (MLPs) and Conv...
The dominant approach for many NLP tasks are recurrent neural networks, in particular LSTMs, and con...
Deep convolutional neural networks (DCNNs) have an unchallengeable performance advantage over tradit...
Automatic readability assessment is considered as a challenging task in NLP due to its high degree o...
Abstract Research on language teaching quality has certainly stood out enough to be noticed as the m...
Recently, quality estimation has been attracting increasing interest from machine translation resear...
Zarrieß S, Loth S, Schlangen D. Reading Times Predict the Quality of Generated Text Above and Beyond...
We present a very simple model for text quality assessment based on a deep convolutional neural netw...
© 2020 Aili ShenDocument quality assessment, due to its complexity and subjectivity, requires consid...
Text classification technique is advancing rapidly alongside AI technology, showing signs of maturit...
Evaluating the output of NLG systems is notoriously difficult, and performing assessments of text qu...
Proliferating applications of deep learning, along with the prevalence of large-scale text datasets,...
This paper describes the system submit-ted by the University of Heidelberg to the Shared Task on Wor...
Abstract Using traditional machine learning approaches, there is no single feature engineering solut...
Text quality is a key aspect of overall print quality. Assessing text quality objectively and quanti...
International audienceWe compare the performances of several Multi-Layer Perceptrons (MLPs) and Conv...
The dominant approach for many NLP tasks are recurrent neural networks, in particular LSTMs, and con...
Deep convolutional neural networks (DCNNs) have an unchallengeable performance advantage over tradit...
Automatic readability assessment is considered as a challenging task in NLP due to its high degree o...
Abstract Research on language teaching quality has certainly stood out enough to be noticed as the m...
Recently, quality estimation has been attracting increasing interest from machine translation resear...
Zarrieß S, Loth S, Schlangen D. Reading Times Predict the Quality of Generated Text Above and Beyond...