Community relations discovery methods for users in Fancircle based on sentiment analysis in China
Data Technologies and Applications
ISSN: 2514-9288
Article publication date: 29 January 2024
Issue publication date: 5 September 2024
Abstract
Purpose
The identification of network user relationship in Fancircle contributes to quantifying the violence index of user text, mining the internal correlation of network behaviors among users, which provides necessary data support for the construction of knowledge graph.
Design/methodology/approach
A correlation identification method based on sentiment analysis (CRDM-SA) is put forward by extracting user semantic information, as well as introducing violent sentiment membership. To be specific, the topic of the implementation of topology mapping in the community can be obtained based on self-built field of violent sentiment dictionary (VSD) by extracting user text information. Afterward, the violence index of the user text is calculated to quantify the fuzzy sentiment representation between the user and the topic. Finally, the multi-granularity violence association rules mining of user text is realized by constructing violence fuzzy concept lattice.
Findings
It is helpful to reveal the internal relationship of online violence under complex network environment. In that case, the sentiment dependence of users can be characterized from a granular perspective.
Originality/value
The membership degree of violent sentiment into user relationship recognition in Fancircle community is introduced, and a text sentiment association recognition method based on VSD is proposed. By calculating the value of violent sentiment in the user text, the annotation of violent sentiment in the topic dimension of the text is achieved, and the partial order relation between fuzzy concepts of violence under the effective confidence threshold is utilized to obtain the association relation.
Keywords
Citation
Wang, K. (2024), "Community relations discovery methods for users in Fancircle based on sentiment analysis in China", Data Technologies and Applications, Vol. 58 No. 4, pp. 632-651. https://doi.org/10.1108/DTA-09-2023-0570
Publisher
:Emerald Publishing Limited
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