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| Network public opinion risk warning method integrating personality trait |
Hao LIN1,2( ),Leixiao LI1,2,*( ),Li ZHAO3 |
1. College of Intelligent Science and Technology (College of Cyberspace Security), Inner Mongolia University of Technology, Hohhot 010080, China 2. Inner Mongolia Key Laboratory of Beijiang Cyberspace Security, Hohhot 010080, China 3. School of Computer Science and Engineering, Tianjin University of Technology, Tianjin 300384, China |
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Abstract Online public opinion early warning indicator incorporating personality trait information was proposed based on personality psychology and the new social analysis model in order to enhance the effectiveness and interpretability of online public opinion risk early warning method. A social network public opinion early warning indicator system which comprised 4 first-level indicators and 18 second-level indicators was established by combining mainstream indicator such as event topics, public attitude and sentiment tendency. The entropy weight method was employed to determine the weight of each indicator, and TOPSIS was utilized for comprehensive evaluation of public opinion risk. An improved grey wolf optimizer-enhanced N-BEATS model was used to predict public opinion risk at the next moment. Four real-world events were analyzed using the proposed approach in order to verify the feasibility of the proposed early warning method. Factor analysis results show that personality trait-related indicator is more significant compared with sentiment tendency indicator. The prediction results demonstrate that the proposed early warning method can effectively fit risk value sequence and accurately predict public opinion risk.
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Received: 07 July 2025
Published: 06 May 2026
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| Fund: 国家自然科学基金资助项目(62362055);自治区首批“五大任务”关键技术研究专项资助项目(NMGWDRW2025-03);内蒙古自治区重点研发与成果转化计划资助项目(2024SKYPT0012);内蒙古自治区高等学校青年科技英才支持计划资助项目(NJYT22084);内蒙古自然科学基金资助项目(2023MS06008). |
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Corresponding Authors:
Leixiao LI
E-mail: suzukaze_aoba@126.com;llxhappy@126.com
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融入人格特质的网络舆情风险预警方法
为了提高网络舆情风险预警方法的有效性和可解释性,以人格心理学和新社会分析模型为基础,提出融入人格特质信息的网络舆情预警指标. 结合事件主题、公众态度、情感倾向等主流指标,建立包含4个一级指标、18个二级指标的社交网络舆情预警指标体系. 采用熵权法确定各指标权重,利用TOPSIS综合评估舆情风险. 利用改进的灰狼算法优化的N-BEATS预测下一时刻的舆情风险. 为了验证该预警方法的可行性,采用所提方法预测分析4个真实事件. 因子分析结果表明,与情感倾向指标相比,提出的人格特质相关指标更重要. 预测结果表明,利用该预警方法能够拟合风险值序列,可以精确预测舆情风险.
关键词:
网络舆情,
舆情风险预警,
人格特质,
时间序列预测
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