Much research in translation studies indicates that translated texts are ontologic-ally different from original non-translated ones. Translated texts, in any language, can be considered a dialect of that language, known as ‘translationese’. Several characteristics of translationese have been proposed as universal in a series of hypotheses. In this work, we test these hypotheses using a computational methodology that is based on supervised machine learning. We define several classifiers that implement various linguistically informed features, and assess the degree to which different sets of features can distinguish between translated and original texts. We demonstrate that some feature sets are indeed good indicators of translationese, there...
This paper discusses the debatable hypotheses of “Translation Universals”, i. e. the recurring commo...
This thesis investigates how well machine learned classifiers can identify translated text, and the ...
This thesis investigates how well machine learned classifiers can identify translated text, and the ...
Much research in translation studies indicates that translated texts are ontologically different fro...
In this paper we describe an approach to the identification of "translationese" based on monolingual...
In this paper we describe an approach to the identification of "translationese" based on monolingual...
In this paper we describe an approach to the identification of "translationese" based on monolingual...
This paper presents a machine learning approach to the study of translationese. The goal is to train...
A thesis submitted in partial ful lment of the requirements of the University of Wolverhampton for...
The present chapter applies text classification to test how well we can distinguish between texts al...
Many studies have confirmed that translated texts exhibit different features than texts originally w...
International audienceWe have all heard or read the quotation “Machine translation will only displac...
Many studies have confirmed that translated texts exhibit different features than texts originally w...
International audienceWe have all heard or read the quotation “Machine translation will only displac...
This is an accepted manuscript of a chapter published by Springer in Wang V.X., Lim L., Li D. (eds.)...
This paper discusses the debatable hypotheses of “Translation Universals”, i. e. the recurring commo...
This thesis investigates how well machine learned classifiers can identify translated text, and the ...
This thesis investigates how well machine learned classifiers can identify translated text, and the ...
Much research in translation studies indicates that translated texts are ontologically different fro...
In this paper we describe an approach to the identification of "translationese" based on monolingual...
In this paper we describe an approach to the identification of "translationese" based on monolingual...
In this paper we describe an approach to the identification of "translationese" based on monolingual...
This paper presents a machine learning approach to the study of translationese. The goal is to train...
A thesis submitted in partial ful lment of the requirements of the University of Wolverhampton for...
The present chapter applies text classification to test how well we can distinguish between texts al...
Many studies have confirmed that translated texts exhibit different features than texts originally w...
International audienceWe have all heard or read the quotation “Machine translation will only displac...
Many studies have confirmed that translated texts exhibit different features than texts originally w...
International audienceWe have all heard or read the quotation “Machine translation will only displac...
This is an accepted manuscript of a chapter published by Springer in Wang V.X., Lim L., Li D. (eds.)...
This paper discusses the debatable hypotheses of “Translation Universals”, i. e. the recurring commo...
This thesis investigates how well machine learned classifiers can identify translated text, and the ...
This thesis investigates how well machine learned classifiers can identify translated text, and the ...