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Towards Predicting Post-editing Effort with Source Text Readability

Guangrong Dai, Siqi Liu

2024The Journal of Specialised Translation11 citationsDOIOpen Access PDF

Abstract

This paper investigates the impact of source text readability on the effort of post-editing English-Chinese Neural Machine Translation (NMT) output. Six readability formulas, including both traditional and newer ones, were employed to measure readability, and their predictive power towards post-editing effort was evaluated. Keystroke logging, self-report questionnaires, and retrospective protocols were applied to collect the data of post-editing for general text type from thirty-four student translators. The results reveal that: 1) readability has a significant yet weak effect on cognitive effort, while its impact on temporal and technical effort is less pronounced; 2) high NMT quality may alleviate the effect of readability; 3) readability formulas have the ability to predict post-editing effort to a certain extent, and newer formulas such as the Crowdsourced Algorithm of Reading Comprehension (CAREC) outperformed traditional formulas in most cases. Apart from readability formulas, the study shows that some fine-grained reading-related linguistic features are good predictors of post-editing time. Finally, this paper provides implications for automatic effort estimation in the translation industry.

Topics & Concepts

ReadabilityComputer scienceNatural language processingInformation retrievalData scienceProgramming languageText Readability and SimplificationSoftware Engineering ResearchDigital Rights Management and Security
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