Design of an intelligent grading system for college English translation based on big data technology

IF 3.6 Systems and Soft Computing Pub Date : 2025-12-01 Epub Date: 2025-02-19 DOI:10.1016/j.sasc.2025.200205
Xiaoyan Li , Chengzhou Huang
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引用次数: 0

Abstract

Background

The Intelligent Grading System (IGS), now in use for college English translation, has the following problems in actual use: the running time is excessive, and the final score result differs significantly from the actual one. Given this scenario, it is essential to substantially increase grading efficiency and result correctness to reduce manual participation in the enhancing grading efficiency.

Objective

This research investigates the use of big data technology in designing an IGS for college English translation. The study focuses on the intersection of literature and English language teaching, aiming to enhance the accuracy and efficiency of grading translation assignments.

Methods

The deep learning methodology is the core approach for developing the intelligent grading system. By leveraging the power of a Hybrid gradient-boosting decision tree with an ensemble Back Propagation Neural Network (HGBDT-EBPNN), the system learns from large volumes of labeled translation data to identify patterns and extract meaningful features that contribute to accurate grading.

Results

The findings of this research contribute to the growing body of knowledge on the use of big data technology and deep learning in the field of translation assessment. The proposed study has provided 98 % of accuracy in the performance metrics.

Conclusion

The IGS offers a promising solution for enhancing the efficiency and objectivity of grading college English translation assignments. It could improve the quality of feedback provided to students as well as streamline the assessment process for instructors.
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基于大数据技术的大学英语翻译智能评分系统设计
目前正在使用的大学英语翻译智能评分系统(IGS)在实际使用中存在以下问题:运行时间过长,最终评分结果与实际评分结果相差较大。在这种情况下,有必要大幅度提高评分效率和结果的正确性,以减少人工参与提高评分效率。目的探讨大数据技术在大学英语翻译系统设计中的应用。本研究着眼于文学与英语教学的交叉,旨在提高翻译作业评分的准确性和效率。方法深度学习方法是开发智能评分系统的核心方法。通过利用混合梯度增强决策树和集成反向传播神经网络(HGBDT-EBPNN)的功能,系统从大量标记的翻译数据中学习,以识别模式并提取有助于准确评分的有意义的特征。结果本研究的发现有助于在翻译评估领域使用大数据技术和深度学习的知识体系的发展。所提出的研究在性能指标上提供了98%的准确性。结论IGS为提高大学英语翻译作业评分的效率和客观性提供了一种有前景的解决方案。它可以提高提供给学生的反馈的质量,并简化教师的评估过程。
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