结合符号学和思维运行模式分析英美文学的情感特征

Ning Huang
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引用次数: 0

摘要

摘要本文首先结合符号学的互动性、语言课堂情感语境和思维运作模式,分析了英美文学作品的情感特征。然后,在BRET模型与BP神经网络相结合的基础上,构建了B-Feature-BP文本情感特征构建模型,并将符号学与思维操作模型相结合,构建了英美文学作品的情感特征。然后,基于深度学习中的多任务学习方法,提出了一种多任务MT-GSU模型对构建文本的情感特征进行分类和识别。最后,分析了本文在构建、分类和识别英美文学作品情感特征方面的表现,从而分析了英美文学作品的情感特征。结果表明,所构建的情感特征的表现均大于0.8,人物、环境和英美文学作品整体的情感特征表现均在0.87以上,分类时间在[0.338,0.721]s之间。英美文学作品情感特征的倾向性强度为[0.68,0.78],稳定性强度为[0.6,0.74],深度强度为[0.71,0.79],效能强度为[0.72,0.82]。本研究对英美文学作品的鉴赏和翻译具有积极的影响。
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Analyzing the Emotional Characteristics of British and American Literature by Combining Semiotics and the Operational Model of Thinking
Abstract This paper first analyzes the emotional features of English and American literary works by combining semiotics of interactivity, language class emotional context and thinking operation model. Then, a B-Feature-BP text emotion feature construction model is constructed on the basis of the BRET model combined with the BP neural network, and the emotion features of English and American literary works are constructed by combining semiotics and the thought operation model. Then, based on the multi-task learning method in deep learning, a multi-task MT-GSU model is proposed to classify and recognize the emotional features of constructed text. Finally, the performance of constructing, classifying and recognizing the emotional features of English and American literary works in this paper is analyzed so as to analyze the emotional features of English and American literary works. The results show that the performance of the constructed emotional features is all greater than 0.8, and the emotional features of the characters, the environment, and the whole of the English and American literary works are above 0.87, and the classification time is between [0.338,0.721]s. The intensity of tendency of the characteristics of the emotions of the works of English and American literature is [0.68,0.78], the intensity of stability is [0.6,0.74], the intensity of profundity is [0.71,0.79], and the intensity of efficacy is [0.72,0.82]. This study has a positive impact on the appreciation and translation of English and American literary works.
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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