Mining Chinese Animation Movie Audience Concern Themes Based on BERTopic and UGC
--Take "Chang'an" as an example
DOI:
https://doi.org/10.62051/adargr12Keywords:
UGC; Chang'an; Douban Reviews; Theme Mining; Chinese Culture.Abstract
[Objective] To explore how Chinese animated movies can effectively utilize hot topics to feed the box office and improve the competitiveness of the movies by mining hot topics of users' concern through User-Generated Content (UGC). [Methods] Based on the UGC text of Douban reviews of the Chinese animated movie "30,000 Leagues in Chang'an", we adopt the BERTopic algorithm to cluster topics based on the category-based TF-IDF (Word Frequency-Inverse Text Frequency)-weighted clustering, and introduce the semantic fine-tuning of the topics by the ChatGLM2-6B model to excavate the hot topics of users' attention. [Results] Users of the Chinese animated movie "30,000 Leagues in Chang'an" pay attention to five major topic clusters, including Chinese culture, word-of-mouth communication, poetic narrative, production technology, and the controversy of new historical facts. [Limitations] The country differences in the topic concerns of Chinese animated films were not analyzed in comparison with foreign UGC texts. [Conclusion] This study focuses on UGC text analysis to discover the social attention and evolution law of related topics. These findings provide some reference value for future Chinese animated movie production and production, box office prediction and marketing.
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Lou Zhengzheng, Zhu Junjiao, Zhang Wanbang, Wu Bin. A neural recommendation method for role-oriented graph in user-generated content scenarios[J]. Journal of Computer Science, 1-17.
Xu Y, Wu Yali, Li Dongqin, Zhao Tao, Jiao Menglei. A Review of Advances in User-Generated Content Research [J]. Modern Intelligence,2018,38(11):130-135+144
Y Xu, Yali Wu, Dongqin Li, Tao Zhao, Menglei Jiao. A review on the progress of user-generated content research[J]. Modern Intelligence,2018,38(11):130-135+144
Krummen N, Weithmann H, Schilling H, et al. Inductive Rotary Joint Comprising Polymer Material [Z].2008.
Vickery G, Wunschvincent S. Participative Web and User-Created Content [J]. General Information, 2007.
Peng Lan. "Liquid," "Semi-liquid," and "Gas": the "Three States" of the Network Community [J]. International Journalism,2020,42(10):31-47.
Qin Fen, Li Yang. Research Review and Prospect of User-Generated Content Incentive Mechanism [J]. Foreign Economy and Management, 2018, 40(08).
Lan Qinhua.UGC (User Generated Content) Concept Discussion[J]. China Network Communication Research,2010(00):279-286.
Zhao Yuxiang ,Fan Zhe,Zhu Qinghua. Conceptual analysis and research progress of user-generated content (UGC)[J]. Chinese Journal of Librarianship,2012,38(05):68-81.
Jinghua Zhao,Wanyu Xie,Xiting Lv et al. User demand identification and its development trend prediction based on RF-BERT and UGC[J/OL]. Intelligence Science:1-22[2024-01-05].
Jing Yan. UGC quality prediction method based on user reputation rating [D]. Zhengzhou University,2017.
HU Hua. Research on the construction of semi-automatic application ontology based on Chinese UGC information source [D]. Wuhan University,2017.
Johan, Östman. Information, expression, participation: How involvement in user- generated The role of content relates to democratic engagement among young people [J]. New Media & Society, 2012.
Johnson, Kim K P, Kim, et al. Power of consumers using social media: examining the influences of brand-related user-generated content on Facebook [J]. Computers in human behavior, 2016.
HU Yong,LIU Chunyi.UGC has not yet finished,AIGC has already come:Retracing,Rethinking and Reconstructing "Content"[J]. Contemporary Communication,2023(05):4-14.
Yuxiang Zhao, Qinghua Zhu. A study of the main drivers affecting user-generated content in the Web2.0 environment [J]. Chinese Librarianship Journal, 2009, 35(05): 107-161-52.
Fan Zhe,Zhang Qian.Research on user contribution behavior of Q&A websites under the perspective of MOA[J]. Books and Intelligence,2015(05):123-132.
S. Y. Zhang. Research on the analysis of user-generated content motivation and quality evaluation of mobile Internet [D]. Jilin University,2015.
Jinghua Zhao,Wanyu Xie,Xiting Lv,et al. User demand identification and its development trend prediction based on RF-BERT and UGC[J/OL]. Intelligence Science:1-22[2024-04-03]. http://kns.cnki.net/kcms/detail/22.1264.G2.20230915.1313.015.html.
Linhong Xu,Hongfei Lin,Zhihao Yang. A mechanism for recognizing textual tendency based on semantic understanding[J]. Journal of Chinese Information,2007(01):96-100.
Yang J, Yecies B. Mining Chinese Social Media UCC: A Big Data Framework for Analyzing Douban Movie Reviews [ J]. Journal of Big Data, 2016, 3 ( 1) : 1-23.
Ji Xue,Gao Qi,Li Xianfei,et al. Review mining and requirement acquisition method considering product attribute hierarchy[J]. Computer Integrated Manufacturing Systems,2020,26(03):747-759.
Zhen-Gang Zhang,Tai-Ye Luo. Product Requirements Analysis Based on Online Review Data Mining and Kano Model[J]. Management Review,2022,34(11):109-117.
Marcello M M,Samuel F W. Exploring how consumer goods companies innovate in the digital age: the role of big data analytics companies[J]. Journal of Business Research,2020,121:338-352.
Truong V N,Li Z,Alain Y L et al. Predicting customer demand for remanufactured products: A data-mining approach[J]. European Journal of Operational Research,2020,281(3): 543-558.
Shen Chao,Wang Anning,Fang Zhao,et al. Product demand trend mining based on online review data[J]. China Management Science Science,2021,29(05):211-220.DOI:10.16381/j.cnki.issn1003-207x.2018.1508.
Hou Lili. Research on the mechanism of users' academic interaction behavior in meta-universe UGC community[J]. Library Work and Research,2023(12):3-12.DOI:10.16384/j.cnki.lwas.2023.12.010.
Fu Yu,Cao Yinan,Wang Qiang. Research on the influence mechanism of user-generated content information adoption in mobile social media based on graphic multidimensional feature fusion[J/OL]. Intelligence Information Work:1-16[2024-01-08].
GROOTENDORST M. BERTopic: Neural Topic Modeling with a Class-Based TF-IDF Procedure: arXiv:2203.05794 [Z/OL]. arXiv, 2022(2022-03-11). http://arxiv.org/abs/2203.05794.
VASWANI A, SHAZEER N, PARMAR N, et al. Attention Is All You Need [J/OL]. arXiv:1706.03762 [Cs], 2017.
DEVLIN J, CHANG M-W, LEE K, et al. BERT: Pre-Training of Deep Bidirectional Transformers for Language Understanding[J/OL]. arXiv:1810.04805 [Cs], 2019.
REIMERS N, GUREVYCH I. Sentence-BERT: Sentence Embeddings Using Siamese BERT-Networks: arXiv:1908.10084 [Z/OL]. arXiv, 2019(2019-08-27). http://arxiv.org/abs/1908.10084.
CHICCO D. Siamese Neural Networks: an Overview[M/OL]. CARTWRIGHT H, ed.//Artificial Neural Networks. New York, NY: Springer US, 2021: 73-94.
REIMERS N, GUREVYCH I. Making Monolingual Sentence Embeddings Multilingual Using Knowledge Distillation: arXiv:2004.09813 [Z/OL]. arXiv, 2020(2020-10-05). http://arxiv.org/abs/2004.09813.
MCINNES L, HEALY J, MELVILLE J. UMAP: Uniform Manifold Approximation and Projection for Dimension Reduction: arXiv:1802.03426 [Z/OL]. arXiv, 2020(2020-09-17). http://arxiv.org/abs/1802.03426.
CAMPELLO R J G B, MOULAVI D, SANDER J. Density-Based Clustering Based on Hierarchical Density Estimates[C]//Springer. 2013. Berlin, Heidelberg.
DU Z, QIAN Y, LIU X, et al. GLM: General Language Model Pretraining with Autoregressive Blank Infilling: arXiv:2103.10360 [Z/OL]. arXiv, 2022(2022-03-17). http://arxiv.org/abs/2103.10360.
Chen Kehong,Ma Chen Nympho. Imagination and Return:The Cultural Reproduction and Communication Logic of 30,000 Leagues in Chang'an[J]. Media Observer 2023(09):111-120.Chen Kehong, Ma Chenxing. Imagination and Return:The Cultural Reproduction and Communication Logic of Chang An[J]. Media Observer 2023(09):111-120.
[UK] Terry Eagleton. Postmodernist Illusions [M]. Hua Ming, Translation. Beijing:Commercial Press,2001. [E] Terry Eagleton. Postmodernist Illusion[M]. Beijing: The Commercial Press, 2001.
Liu Shuliang. The Conceptual Origins, Early Dissemination and Contemporary Extension of the "Chinese School of Animation"[J]. Modern Communication:Journal of Communication University of China,2023,45(6):108-114.Liu Shuliang. ' Chinese Animation School ' Concept of Origin, Early Communication and Contemporary Extension [J]. .Modern Communication:Journal of Communication University of China,2023,45 (6):108-114.
Tang Xiaotian. Interpretation of the Dimension of Historical and Literary Narrative [D]. Tang Xiaotian. Interpretation of the Dimension of Historical and Literary Narrative [D].Shenyang Normal University,2023.
Gao J. The interpretation of light-tracking animation in the postmodern context[J]. Gao Jie.The interpretation of light-tracking animation in the postmodern context[J].Film Literature,2021(14):75-77.
Chen Kehong,Ma Chen Nympho. Imagination and Return:The Cultural Reproduction and Communication Logic of "Chang'an"[J]. Media Observation,2023(09):111-120.2023(09):111-120.Chen Kehong,Ma Chenxing.Imagination and Return:The Cultural Reproduction and Communication Logic of Chang An[J].Media Observer 2023(09):111-120.
The Language of Cinema [M]. Marcel Mardan. Film language [M].Marcel Mardan.China Film Publishing House.2006.195.
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