Abstract
INTRODCTION: The study of automatic marking methods in the Department of Language Translation is conducive to the fairness and rationality of marking by examining the comprehensive level of the students' language, as well as sharing the objectivity and pressure of the marking teachers in marking the scripts.OBJECTIVES: Aiming at the current automatic scoring methods of translation systems, which have the problems of not considering the global nature of influence features and low precision.METHODS: This paper proposes an automatic scoring method for translation system based on intelligent optimization algorithm to improve the deep network. First, by analyzing the language translation scoring problem, selecting the key scoring influencing factors and analyzing the correlation and principal components; then, improving the long and short-term memory network through the triangle search optimization algorithm and constructing the automatic scoring model of the translation system; finally, the high efficiency of the proposed method is verified through the analysis of simulation experiments.RESULTS: The proposed method is effective and improves the accuracy of the scoring model.CONCLUSION: solves the problem of inefficient scoring in the automatic scoring method of the translation system.
Publisher
European Alliance for Innovation n.o.
Reference29 articles.
1. Sebastian M P , Kumar G S .Malayalam Natural Language Processing: Challenges in Building a Phrase-Based Statistical Machine Translation System[J].ACM transactions on Asian and low-resource language information processing, 2023.
2. Fengqi L .A comparative study on the quality of English-Chinese translation between translation learners and a machine translation system in the era of artificial intelligence[J].Foreign Language World, 2022(4):72-79.
3. Mosedale A , Hendrie D , Geelhoed E ,et al. Realist evaluation of the impact of the research translation process on health system sustainability: a study protocol[J].BMJ open, 2022, 12(6):e045172.
4. Flores C A , Figueroa R L , Pezoa J .Active Learning for Biomedical Text Classification Based on Automatically Generated Regular Expressions[J].IEEE Access, 2021, 9:38767-38777.
5. Qiu J , Shi C , Lv Y .Three Approaches for Detecting Direct Output Cheating in Program Online Judge Systems[J].International Journal of Software Engineering and Knowledge Engineering, 2023, 33(04):461-486.