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Data Analysis and Knowledge Discovery  2018, Vol. 2 Issue (6): 37-47    DOI: 10.11925/infotech.2096-3467.2017.1107
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Analyzing Public Opinion from Microblog with Topic Clustering and Sentiment Intensity
Wang Xiufang, Sheng Shu(), Lu Yan
College of Computer of Science and Engineering, Shandong University of Science and Technology, Qingdao 266590, China
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Abstract  

[Objective] This paper builds a model to monitor the trending topics from microblogs, aiming to deal with the issues of text drifting and quantitation of sentimental polarity. [Methods] First, we proposed a public opinion analysis model based on topic clustering and sentiment intensity. Then, we used the time series regression analysis to predict the sentimental changes among the trending topics. [Results] The prediction accuracy of our model reached 88.97%, which was about 7% higher than the iLab-Edinburgh model. [Limitations] More research is needed to study the early warning mechanisms for emergency events. [Conclusions] The proposed model could improve the prediction accuracy of sentimental changes, which provides an effective way to analyze the public opinion from microblogs.

Key wordsPublic Opinion Analysis      Sentiment Analysis      Topic Clustering      Sentiment Intensity Analysis     
Received: 07 November 2017      Published: 11 July 2018
ZTFLH:  G353.1  

Cite this article:

Wang Xiufang,Sheng Shu,Lu Yan. Analyzing Public Opinion from Microblog with Topic Clustering and Sentiment Intensity. Data Analysis and Knowledge Discovery, 2018, 2(6): 37-47.

URL:

https://manu44.magtech.com.cn/Jwk_infotech_wk3/EN/10.11925/infotech.2096-3467.2017.1107     OR     https://manu44.magtech.com.cn/Jwk_infotech_wk3/EN/Y2018/V2/I6/37

#话题1 #话题2 #话题3 #话题4 #话题5
5.4级 双摄 恋情 中国特色 实现
震感 拍照 恩爱 新时代 中国特色
绵阳 体验 祝福 中共 中华民族
广元市 IOS 11 不般配 党组织 梦想
平安 预售 公开 不忘初心 社会主义
汶川地震 剁手 迪丽热巴 北京 奋斗
自然灾害 销量 荧幕CP 习近平 十九
应急 发布 表白体 报告 两个一百年
伤亡 乔布斯 粉丝 央视新闻 价值观
文本数 话题 话题情感词、标号及权值
正面 负面 中性
300 #话题1 祈福: 3.1554; 天佑: 2.636; 加油: 1.845…… 担心; 3.245; 倒塌: 2.907; 惧怕: 0.7824…… 自救: 1.445; 灾难: 1.4574……
300 #话题2 好看: 3.785; 流畅: 2.535;
操作简单: 1.8553……
不便宜: 3.522; 性能差: 2.482; 不稳定: 2.2435; 卡: 1.5345…… 简单: 0.933; 还可以: 1.7734……
300 #话题3 祝福: 3.284; 接受: 2.3409;
喜欢: 2.184……
不般配: 3.484; 不支持: 3.233; 讨厌: 2.323…… 分手: 1.366; 失恋: 1.384……
300 #话题4 贺电: 3.568; 自豪: 3.157;
加油: 2.824; 期待: 2.646……
不关心: 3.233 …… 考试: 1.5428; 考研: 1.738……
300 #话题5 厉害: 3.549; 希望: 2.892;
最棒: 2.547……
困难: 2.783…… 学习: 1.4857; 努力: 1.626……
话题 #话题1 #话题2 #话题3 #话题4 #话题5
#话题1 1 0.1865 0.1296 0.4586 0.4132
#话题2 0.1865 1 0.2574 0.1968 0.1269
#话题3 0.1296 0.2574 1 0.2658 0.3326
#话题4 0.4586 0.1968 0.2658 1 0.8434
#话题5 0.4132 0.1269 0.3326 0.8434 1
序号 话题 整体热议指数 当月最高
1 #四川地震 493 12 500
2 #iPhone 8 57 863 769 470
3 #鹿晗关晓彤 58 429 785 282
4 #十九大 288 031 3 776 591
5 #中国梦 38 630 436 625
话题 #四川
地震
#iPhone 8 #鹿晗
关晓彤
#十九大 #中国梦
情感权重 1.173 1.256 1.582 1.486 1.248
情感强度 2.1987 2.3874 2.7834 2.5332 2.4021
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