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基于情感主题建模的负面舆情早期预警研究

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社交网络中的负面舆情事件具有不可低估的影响力,针对基于情感分析的方法不能直接对负面网络舆情进行早期预警的问题,该文提出了一种基于情感分类和主题提取的舆情主题建模方法,通过研究消极情绪主题词实现对负面舆情事件统计和量化;针对负面舆情预警方法即时性不足的问题,构建网络舆情早期预警模型,从爆发指数、情绪指数、传播指数3个指标综合评估舆情主题的发展态势,设定舆情主题算数指数触发预警值,实现主题词对应的负面舆情事件的早期预警.实验结果表明,在COVID-19相关微博情感数据集TF-IDF权重排名前10的消极情绪主题词中,最早预警时间比舆情暴发日平均提前161.01h,实现的早期预警平均为2.1次;最早预警时间比舆情峰值日平均提前261.81 h,平均早期预警5.8次.所提出的预警模型对社交网络舆情事件具有良好的早期预警效果.
Research on early warning of negative public opinion based on sentiment topic modeling
[Objective]The effect of negative public opinion events on social networks is underestimated.To address the issue of sentiment-based methods not being able to directly achieve early warning of negative online public opinion,this study proposes a sentiment classification and topic extraction-based approach to public opinion topic modeling.Using negative emotional topics as an entry point,this study shifts from investigating negative public opinion events to examining negative public opinion topics,thus facilitating statistical and quantifiable analysis of such events.Additionally,to address the persistent shortcomings of methods for negative public opinion early warning,we construct a novel early warning evaluation metric,which is known as the public opinion topic arithmetic index(POI).This index comprehensively assesses the developmental trends of public opinion topics across three dimensions:explosion index(EI),sentiment index(SI),and dissemination index(DI).[Methods]This study employs the ERNIE 3.0 large-scale language model for sentiment classification.The annotated sentiment dataset is further trained and fine-tuned to obtain the required sentiment classifier.It performs sentiment classification on a COVID-19 Weibo emotional dataset,computing various post sentiments.The topic extraction module uses the TF-IDF algorithm to extract topics.Each noun tag is considered a potential topic,whereas each Weibo post is treated as a document.The TF-IDF method captures frequently occurring words by calculating their frequencies and avoiding less important terms that appear in each document.The TF-IDF topic extraction algorithm extracts topics from negative emotional Weibo posts and identifies relevant topics associated with negative public opinion events.Finally,POI is employed for further analysis based on the extracted public opinion topics.Consequently,early warning is achieved by analyzing negative public opinion topics instead of events.Furthermore,POI comprehensively calculates the effect of negative public opinion topics by combining EI,SI,and DI.EI reflects the growth rate of the current number of textual instances related to negative emotional topics compared to the average number in a previous period;SI mainly reflects the public's emotions and sentiments triggered by public opinion topics;and DI mainly represents the scope and speed of dissemination of public opinion topics.Finally,a comprehensive negative emotional topic public opinion index is derived by calculating the El,SI,and DI of emotional topics and postdata information,and the topics that exceeded the warning threshold are warned.[Results]The experimental results reveal that the proposed early warning model effectively predicts social media public opinion events.Among the top ten negatively perceived topics ranked based on weight,the earliest warning time exceeds the average outbreak day by 161.01 hours,with an average of 2.1 early warnings.Additionally,the earliest warning time exceeds the average peak day by 261.81 hours,with an average of 5.8 early warnings.[Conclusions]We establish a threshold for triggering the arithmetic index of public opinion topics by modeling and calculating the arithmetic index of negative public opinion topics in this study.This enables us to exclude negative topics and corresponding public opinion events that surpass the threshold,thereby achieving early warning for topic-related negative public opinion events.The proposed negative public opinion warning model accomplishes its intended objective by employing sentiment analysis methods for the early detection of online public opinions.

online public opinionsentiment classificationtopic extractionpublic opinion indexearly warning form

崔骕、韩益亮、朱率率、李鱼、吴旭光

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武警工程大学密码工程学院,西安 710086

武警工程大学反恐指挥信息工程教育部重点实验室,西安 710086

网络舆情 情感分类 主题提取 舆情指数 早期预警

国家社会科学基金西部项目国家自然科学基金面上项目

20XTQ00761572521

2024

清华大学学报(自然科学版)
清华大学

清华大学学报(自然科学版)

CSTPCD北大核心
影响因子:0.586
ISSN:1000-0054
年,卷(期):2024.64(10)