Abstract
Up to now, the development path of Chinese women's liberation movement and modern Chinese women's literature is fundamentally different from that of the West. Therefore, the study of Chinese women's literature can not only rely on the essentialism of western feminist literary theory but also must return to the social reality and cultural reality of China. Based on social media data mining, this study uses the Word2vec model to map the text content to a more abstract word vector space, improves the original Text Rank algorithm from three aspects, semantic association between words, word frequency, and word directionality, then carries out feature extraction, and applies this algorithm to the generation of user tags. The feasibility and superiority of the model are verified by comparative experiments on LFR benchmark network. The research in this study provides a reference for the analysis of users' interests and behaviors and has certain theoretical significance and application value.
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