Research on artificial intelligence machine translation based on BP neural algorithm
DOI:
https://doi.org/10.4108/eetsis.5075Keywords:
BP nerve, algorithms, machine translation, artificial intelligenceAbstract
The primary focus of artificial intelligence advancement is in machine translation; nonetheless, a prevalent issue persists in the form of imprecise translation. The current challenge faced by artificial intelligence is to effectively executing machine translation from extensive datasets. This research presents a BP neural method that aims to repeatedly analyse translation data and achieve optimisation in machine translation. The findings indicate that the use of BP neural network may enhance the dependability and precision of machine translation, with an accuracy rate over 84%. This performance surpasses that of the online translation approach. Hence, it can be inferred that the use of BP neural algorithms has the potential to fulfil the requirements of machine translation and enhance the precision of online translation conducted by humans.
References
Gao Y: The Role of Russian Spatial Preposition Structure in Russian Language Teaching. Educational Administration: Theory and Practice. 2022; 28(03): 60–71.
Al Fath A. M. S., Harun: The Impact of Educational Practices in Learning Comics and Video Media on Social Science Subjects as Alternatives in a Pandemic Period. Educational Administration: Theory and Practice. 2021; 27(3): 1125–1132.
Sharma, A. S, Hota, D. H: ECG Analysis-Based Cardiac Disease Prediction Using Signal Feature Selection with Extraction Based on AI Techniques, IJCNIS. 2021; 14(3): 73–85.
Rismawaty Arunglabi, A. T. I. R., Askar Taliang, M. R: 5G Technology in Smart Healthcare and Smart City Development Integration with Deep Learning Architectures, IJCNIS. 2022; 14(3): 99–109.
Mubeen S., Kulkarni D. N, Tanpoco, M. R., Kumar, D. R., M L. N. ., & Dhope, T: Linguistic Based Emotion Detection from Live Social Media Data Classification Using Metaheuristic Deep Learning Techniques, IJCNIS. 2022; 14(3): 176–186.
Falah Amer Abdulazeez, Abdul Sttar Ismail, & Rafid S. Abdulaziz: Using Gradient Descent to An Optimization Algorithm that uses the Optimal Value of Parameters (Coefficients) for a Differentiable Function, IJCNIS.2023; 15(1): 24–36.
Santosh, K., Goyal, A., Aouada, D., Makkar, A., Chiang, YY., Singh: Recent Trends in Image Processing and Pattern. Communications in Computer and Information Science 2022., vol 1704.
Rajesh, E., Basheer, S., Dhanaraj, R. K., Yadav, S., Kadry, S., Khan, M. A., Kim, Y. J., & Cha, J.-H: Machine Learning for Online Automatic Prediction of Common Disease Attributes Using Never-Ending Image Learner. In Diagnostics,2022; Vol. 13, Issue 1: p. 95.
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Copyright (c) 2023 Yan Wang
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