基于神经网络算法的大学英语翻译质量评估方法。

Min Gong
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摘要

这些结果凸显了神经网络算法在提供一致性和透明度方面的变革潜力,同时减少了人工评估中固有的主观性,彻底改变了学术界的翻译质量评估。这些发现对学术界具有重要意义,因为可靠的翻译质量评估对促进跨文化知识交流至关重要。然而,需要进一步研究特定领域的适应性等挑战,以改进并最大限度地提高这种新方法的有效性,最终提高学术内容的可访问性并促进全球学术交流。所提出的方法包括使用神经网络算法评估大学英语翻译质量,从数据收集和准备开始,开发神经网络模型,并以人工评估为基准评估其性能。研究同时使用人类评估者和神经网络模型来评估学术论文的翻译质量,结果显示人类评估和模型评估之间存在很强的相关性(0.84)。这些发现表明,该模型具有在学术环境中提高翻译质量的潜力,但还需要进行更多的研究来解决某些局限性。结果表明,与传统人工评估和部分自动化模型相比,基于神经网络的模型在准确度、精确度、F-measure 和召回率方面都获得了更高的分数,这表明它在评估翻译质量方面表现出色。
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The neural network algorithm-based quality assessment method for university English translation.
These results highlight the transformative potential of neural network algorithms in providing consistency and transparency while reducing the inherent subjectivity in human evaluations, revolutionizing translation quality assessment in academia. The findings have significant implications for academia, as reliable translation quality evaluations are crucial for fostering cross-cultural knowledge exchange. However, challenges such as domain-specific adaptation require further investigation to improve and maximize the effectiveness of this novel approach, ultimately enhancing the accessibility of academic content and promoting global academic discourse. The proposed method involves using neural network algorithms for assessing college-level English translation quality, starting with data collection and preparation, developing a neural network model, and evaluating its performance using human assessment as a benchmark. The study employed both human evaluators and a neural network model to assess the quality of translated academic papers, revealing a strong correlation (0.84) between human and model assessments. These findings suggest the model's potential to enhance translation quality in academic settings, though additional research is needed to address certain limitations. The results show that the Neural Network-Based Model achieved higher scores in accuracy, precision, F-measure, and recall compared to Traditional Manual Evaluation and Partial Automated Model, indicating its superior performance in evaluating translation quality.
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