The study reported on in this article set out to test the hypothesis that linguistic operationalisations of the features of translated language will demonstrate significant differences in the work of experienced and inexperienced translators. A custom-built comparable English corpus was used, comprising three subcorpora: translations produced by experienced translators, translations by inexperienced translators, and non-translated texts. A number of linguistic operationalisations were selected for three of the features of translated language: explicitation, simplification and normalisation. The differences in these linguistic features in the three subcorpora were analysed, using parametric or non-parametric ANOVA, and T-tests or Mann-Whitney U-tests as post-hoc tests where applicable. The findings of the study indicate substantial (though not unqualified) support for the hypothesis. It is argued that experience-related variation in register sensitivity, language competence, awareness of written language conventions and sensitivity to translation norms are the main factors contributing to expertise.
Explicitation, simplification, normalisation and levelling-out, the four features of translation proposed by Baker (1996), have attracted considerable attention in translation studies. Although the first three have been studied extensively, levelling-out has been the subject of less empirical investigation. Furthermore, there are no studies to date that have investigated the extent to which levelling-out occurs in translations by experienced translators and inexperienced translators. In this study, levelling-out is operationalised in terms of register. It is hypothesised that less register variation will be apparent in translations by inexperienced translators and, in keeping with the features of translation hypothesis, it is predicted that select linguistic features will demonstrate less register variation in translations than in non-translations. A custom-built corpus was compiled to test these hypotheses. While some light is shed on how translation expertise contributes to register sensitivity and the distribution of certain features across different registers, little evidence could be found for levelling-out as register variation is evident in the translation corpora.
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