Zheng Danyang
School of Foreign Languages, Tianjin University, Tianjin, China.
PeerJ Comput Sci. 2024 Jan 31;10:e1842. doi: 10.7717/peerj-cs.1842. eCollection 2024.
In recent years, with the rapid development of the Internet and multimedia technology, English translation text classification has played an important role in various industries. However, English translation remains a complex and difficult problem. Seeking an efficient and accurate English translation method has become an urgent problem to be solved. The study first elucidated the possibility of the development of transfer learning technology in multimedia environments, which was recognized. Then, previous research on this issue, as well as the Bidirectional Encoder Representations from Transformers (BERT) model, the attention mechanism and bidirectional long short-term memory (Att-BILSTM) model, and the transfer learning based cross domain model (TLCM) and their theoretical foundations, were comprehensively explained. Through the application of transfer learning in multimedia network technology, we deconstructed and integrated these methods. A new text classification technology fusion model, the BATCL transfer learning model, has been established. We analyzed its requirements and label classification methods, proposed a data preprocessing method, and completed experiments to analyze different influencing factors. The research results indicate that the classification system obtained from the study has a similar trend to the BERT model at the macro level, and the classification method proposed in this study can surpass the BERT model by up to 28%. The classification accuracy of the Att-BILSTM model improves over time, but it does not exceed the classification accuracy of the method proposed in this study. This study not only helps to improve the accuracy of English translation, but also enhances the efficiency of machine learning algorithms, providing a new approach for solving English translation problems.
近年来,随着互联网和多媒体技术的飞速发展,英文翻译文本分类在各个行业中发挥了重要作用。然而,英文翻译仍然是一个复杂且困难的问题。寻求一种高效准确的英文翻译方法已成为亟待解决的问题。该研究首先阐明了迁移学习技术在多媒体环境中发展的可能性,这一点得到了认可。然后,全面解释了此前关于此问题的研究,以及来自变换器的双向编码器表征(BERT)模型、注意力机制和双向长短期记忆(Att-BILSTM)模型,还有基于迁移学习的跨域模型(TLCM)及其理论基础。通过在多媒体网络技术中应用迁移学习,我们对这些方法进行了解构和整合。建立了一种新的文本分类技术融合模型,即BATCL迁移学习模型。我们分析了其要求和标签分类方法,提出了一种数据预处理方法,并完成了实验以分析不同的影响因素。研究结果表明,该研究获得的分类系统在宏观层面与BERT模型有相似趋势,且本研究提出的分类方法最多可超越BERT模型28%。Att-BILSTM模型的分类准确率随时间提高,但未超过本研究提出的方法的分类准确率。本研究不仅有助于提高英文翻译的准确性,还提高了机器学习算法的效率,为解决英文翻译问题提供了一种新方法。