An evaluation of online machine translation of arabic into english news headlines: Implications on students' learning purposes

Kadhim, K.A. and Habeeb, L.S. and Sapar, A.A. and Hussin, Z. and Abdullah, M.M.R.T.L. (2013) An evaluation of online machine translation of arabic into english news headlines: Implications on students' learning purposes. Turkish Online Journal of Educational Technology, 12 (2). pp. 39-50. ISSN 13036521

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Abstract

Nowadays, online Machine Translation (MT) is used widely with translation software, such as Google and Babylon, being easily available and downloadable. This study aims to test the translation quality of these two machine systems in translating Arabic news headlines into English. 40 Arabic news headlines were selected from three online sources, namely Aljazeera, daralhayat, and Aawsat, where their English manuallytranslated versions were available. The selected data was evaluated by conducting criteria of Hutchins and Somers (1992) to find the assessment of each system outputs. Besides that, the selected data was also examined to find the types of translation techniques that are available in both machine outputs. A questionnaire was assigned to experienced professionals to evaluate the outputs to examine and determine which system was better to use in translating the collected data. The evaluation was based on criteria proposed by Hutchins and Somers. The findings indicated that both Google and Babylon had 80 of clarity, and Google scored a higher value of accuracy, i.e. 77.5, compared to 75 of accuracy for Babylon. However, Babylon scored a higher value for style, i.e. 72.5, compared to a score of 70 by Google. Nevertheless, the results revealed that online MT is undergoing improvement, and it has the potential to be one of the elements of globalization. As implication, the students could use online MT for learning purposes easily and quickly. © The Turkish Online Journal of Educational Technology.

Item Type: Article
Additional Information: cited By 5
Depositing User: Mr Ahmad Suhairi UTP
Date Deposited: 09 Nov 2023 15:51
Last Modified: 09 Nov 2023 15:51
URI: https://khub.utp.edu.my/scholars/id/eprint/3682

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