2024
DOI: 10.2478/amns-2024-0950
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Imagery Recognition and Semantic Analysis Techniques in Chinese Literary Texts

Wenfu Zhang

Abstract: Chinese literary texts contain a sizeable vivid imagery vocabulary, which makes it difficult for average readers to judge the boundaries between words, and the current pre-trained language model is also difficult for them to learn its implicit knowledge effectively, which brings troubles to machine semantic analysis. The study uses CRF training to obtain a semantic analysis model of Chinese literary texts that recognizes the semantic relationship between two words. SVM is used to train classifiers for confusin… Show more

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