Human-machine translation model evaluation based on artificial intelligence translation
As artificial intelligence (AI) translation technology advances, big data, cloud computing, and emerging technologies have enhanced the progress of the data industry over the past several decades. Human-machine translation becomes a new interactive mode between humans and machines and plays an essen...
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Politeknik Elektronika Negeri Surabaya (PENS)
2023
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Online Access: | http://eprints.utm.my/108306/1/AbdullahMohdNawi2023_HumanMachineTranslationModelEvaluation.pdf http://eprints.utm.my/108306/ http://dx.doi.org/10.24003/emitter.v11i2.812 |
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my.utm.1083062024-11-13T06:29:23Z http://eprints.utm.my/108306/ Human-machine translation model evaluation based on artificial intelligence translation Li, Ruichao Mohd. Nawi, Abdullah Kang, Myoung Sook H Social Sciences (General) As artificial intelligence (AI) translation technology advances, big data, cloud computing, and emerging technologies have enhanced the progress of the data industry over the past several decades. Human-machine translation becomes a new interactive mode between humans and machines and plays an essential role in transmitting information. Nevertheless, several translation models have their drawbacks and limitations, such as error rates and inaccuracy, and they are not able to adapt to the various demands of different groups. Taking the AI-based translation model as the research object, this study conducted an analysis of attention mechanisms and relevant technical means, examined the setbacks of conventional translation models, and proposed an AI-based translation model that produced a clear and high quality translation and presented a reference to further perfect AI-based translation models. The values of the manual and automated evaluation have demonstrated that the human-machine translation model improved the mismatchings between texts and contexts and enhanced the accurate and efficient intelligent recognition and expressions. It is set to a score of 1-10 for evaluation comparison with 30 language users as participants, and the achieved 6 points or above is considered effective. The research results suggested that the language fluency score rose from 4.9667 for conventional Statistical Machine Translation to 6.6333 for the AI-based translation model. As a result, the human-machine translation model improved the efficiency, speed, precision, and accuracy of language input to a certain degree, strengthened the correlation between semantic characteristics and intelligent recognition, and pushed the advancement of intelligent recognition. It can provide accurate and high-quality translation for language users and achieve an understanding of natural language input and output and automatic processing. Politeknik Elektronika Negeri Surabaya (PENS) 2023 Article PeerReviewed application/pdf en http://eprints.utm.my/108306/1/AbdullahMohdNawi2023_HumanMachineTranslationModelEvaluation.pdf Li, Ruichao and Mohd. Nawi, Abdullah and Kang, Myoung Sook (2023) Human-machine translation model evaluation based on artificial intelligence translation. EMITTER International Journal of Engineering Technology, 11 (2). pp. 145-159. ISSN 2355-391X http://dx.doi.org/10.24003/emitter.v11i2.812 DOI : 10.24003/emitter.v11i2.812 |
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H Social Sciences (General) Li, Ruichao Mohd. Nawi, Abdullah Kang, Myoung Sook Human-machine translation model evaluation based on artificial intelligence translation |
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As artificial intelligence (AI) translation technology advances, big data, cloud computing, and emerging technologies have enhanced the progress of the data industry over the past several decades. Human-machine translation becomes a new interactive mode between humans and machines and plays an essential role in transmitting information. Nevertheless, several translation models have their drawbacks and limitations, such as error rates and inaccuracy, and they are not able to adapt to the various demands of different groups. Taking the AI-based translation model as the research object, this study conducted an analysis of attention mechanisms and relevant technical means, examined the setbacks of conventional translation models, and proposed an AI-based translation model that produced a clear and high quality translation and presented a reference to further perfect AI-based translation models. The values of the manual and automated evaluation have demonstrated that the human-machine translation model improved the mismatchings between texts and contexts and enhanced the accurate and efficient intelligent recognition and expressions. It is set to a score of 1-10 for evaluation comparison with 30 language users as participants, and the achieved 6 points or above is considered effective. The research results suggested that the language fluency score rose from 4.9667 for conventional Statistical Machine Translation to 6.6333 for the AI-based translation model. As a result, the human-machine translation model improved the efficiency, speed, precision, and accuracy of language input to a certain degree, strengthened the correlation between semantic characteristics and intelligent recognition, and pushed the advancement of intelligent recognition. It can provide accurate and high-quality translation for language users and achieve an understanding of natural language input and output and automatic processing. |
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Article |
author |
Li, Ruichao Mohd. Nawi, Abdullah Kang, Myoung Sook |
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Li, Ruichao Mohd. Nawi, Abdullah Kang, Myoung Sook |
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Li, Ruichao |
title |
Human-machine translation model evaluation based on artificial intelligence translation |
title_short |
Human-machine translation model evaluation based on artificial intelligence translation |
title_full |
Human-machine translation model evaluation based on artificial intelligence translation |
title_fullStr |
Human-machine translation model evaluation based on artificial intelligence translation |
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Human-machine translation model evaluation based on artificial intelligence translation |
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human-machine translation model evaluation based on artificial intelligence translation |
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Politeknik Elektronika Negeri Surabaya (PENS) |
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2023 |
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http://eprints.utm.my/108306/1/AbdullahMohdNawi2023_HumanMachineTranslationModelEvaluation.pdf http://eprints.utm.my/108306/ http://dx.doi.org/10.24003/emitter.v11i2.812 |
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13.214268 |