Design and implementation of classical literature sentiment analysis system based on ensemble learning and graph neural network

Qianru Gao , Jiachen Huang
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引用次数: 0

Abstract

Classical literary works have attracted extensive attention in modern society because of their unique cultural memory and aesthetic value. However, due to the long history and evolution of language, how to accurately grasp its connotation, especially its emotional color, has always been a dilemma for researchers. This study is committed to the design and implementation of a classical literature sentiment analysis system based on ensemble learning and graph neural network, with the goal of breaking through the limitations of traditional methods and realizing the refined analysis of classical literature sentiment tendencies. By constructing a large-scale corpus covering classics from different eras, this study lays a solid data foundation for model training. Graph neural network technology is innovatively applied to sentiment analysis in classical literature, and the graph structure composed of lexical nodes and semantic edges is used to capture the deep semantic and structural connections of texts. At the same time, bagging and boosting ensemble learning strategies are introduced to optimize the performance of multiple GNN models and form a more robust decision set. Experimental results show that compared with traditional methods, the graph neural network has an accuracy of 91.5 % for sentiment classification, and the ensemble learning further reduces the false positive rate, improving the overall emotion recognition accuracy of the system to 93.7 %, providing an efficient and accurate innovative solution for sentiment analysis of classical literature.
基于集成学习和图神经网络的古典文学情感分析系统的设计与实现
古典文学作品以其独特的文化记忆和审美价值在现代社会引起了广泛的关注。然而,由于语言的历史和演变,如何准确把握语言的内涵,特别是语言的情感色彩,一直是困扰研究人员的难题。本研究致力于基于集成学习和图神经网络的古典文学情感分析系统的设计与实现,旨在突破传统方法的局限性,实现对古典文学情感倾向的精细化分析。通过构建涵盖不同时代经典的大规模语料库,为模型训练奠定了坚实的数据基础。创新地将图神经网络技术应用于古典文学的情感分析,利用由词汇节点和语义边组成的图结构捕捉文本的深层语义和结构联系。同时,引入bagging和boosting集成学习策略来优化多个GNN模型的性能,形成更鲁棒的决策集。实验结果表明,与传统方法相比,图神经网络的情感分类准确率达到91.5%,集成学习进一步降低了误报率,将系统的整体情感识别准确率提高到93.7%,为经典文学情感分析提供了高效、准确的创新解决方案。
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CiteScore
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