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现代图书情报技术  2014, Vol. 30 Issue (2): 72-78     https://doi.org/10.11925/infotech.1003-3513.2014.02.10
  情报分析与研究 本期目录 | 过刊浏览 | 高级检索 |
网络新闻中黄岩岛争端事件舆情研究——以新浪网“中菲黄岩岛争端”专题为例
邹伟1,3, 刘永学1,2, 李满春1,2, 王加胜1,3, 陈映雪3
1. 江苏省地理信息技术重点实验室 南京 210023;
2. 中国南海研究协同创新中心 南京 210023;
2. 南京大学地理与海洋科学学院 南京 210023
Research on Public Opinion of the Disputes on Huangyan Island in the Network News:A Case Study of “Special Reports about the Disputes Between China and Philippines on Huangyan Island”on Sina
Zou Wei1,3, Liu Yongxue1,2, Li Manchun1,2, Wang Jiasheng1,3, Chen Yingxue3
1. Jiangsu Provincial Key Laboratory of Geographic Information Science and Technology, Nanjing 210023, China;
2. Collaborative Innovation Center for the South China Sea Studies, Nanjing 210023, China;
3. School of Geographic and Oceanographic Sciences, Nanjing University, Nanjing 210023, China
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摘要 

[目的] 通过研究新浪网“中菲黄岩岛争端” 专题内容,探究中菲黄岩岛争端事件的舆情变化过程及舆情驱动机制。[应用背景] 随着互联网的快速发展,网络成为反映社会热点的主要载体,2012年“中菲黄岩岛争端”事件是一个典型的网络舆论事件。有效合理地研究该事件的网络舆情,有助于全面认识争端事件的变化情况。[方法] 采用网络爬虫工具获取新闻数据,使用中文分词软件获取研究所需的新闻要素,建立新闻信息数据库和新闻要素数据库,并借助数理统计、Gephi软件等手段进行数据分析。[结果] 中菲黄岩岛争端事件发展过程可分为5个阶段,符合网络突发事件的生命周期曲线;黄岩岛争端事件中,中菲双方争端的焦点相近,但采取的措施各有侧重。[结论] 有利于展现中菲黄岩岛争端事件的整体发展过程,直观地表现中菲双方在争端事件中的措施与立场。

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刘永学
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王加胜
邹伟
陈映雪
关键词 黄岩岛舆情网络新闻新浪网Gephi    
Abstract

[Objective] Depending on "Special Reports about the Disputes between China and Philippines on Huangyan Island"on Sina, the study explores the situation and correlation of the disputes between China and Philippines on Huangyan Island. [Context] With the rapid development of the Internet, it has been the main carrier of reflecting social hot spot. The disputes between China and Philippines on Huangyan Island in 2012 is a typical events on public opinions. To obtain a comprehensive understanding of events, the study searches the public opinions of the events effectively and reasonably. [Methods] This study uses the methods of Web crawler to get the news data, employs text participle to obtain the elements of news and establishes database of the disputes of Huangyan Island. By using mathematical statistics and Gephi software, the study achieves data analysis. [Results] Changing processes of the situation in the disputes between China and Philippines on Huangyan Island can be divided into five stages. It accords with the lifecycle principle of network public sentiment emergency. The focus in the disputes between China and Philippines on Huangyan Island is similar, but the two sides focused on different measures. [Conclusions] This study is helpful to show a complete development process of the disputes between China and Philippines on Huangyan Island. Meanwhile, it also performs different measures and standpoints between China and Philippines on Huangyan Island.

Key wordsHuangyan Island    Public opinion    Network news    Sina    Gephi
收稿日期: 2013-10-09      出版日期: 2014-03-06
:  G35  
基金资助:

本文系国家高技术研究发展计划课题基金项目“南海及其邻域空间情势综合分析与决策模拟系统”(项目编号:2012AA12A406)的研究成果之一。

通讯作者: 刘永学 E-mail:yongxue@nju.edu.cn     E-mail: yongxue@nju.edu.cn
作者简介: 作者贡献声明:邹伟:设计研究方案,分析数据,撰写论文;刘永学:提出研究思路(网络爬虫部分),对拟发表文章作最后审阅及定稿;李满春:提出研究思路(中文分词部分、数据分析部分);王加胜:设计研究方案,采集和清洗数据;陈映雪:设计研究方案,负责最终论文修订。
引用本文:   
邹伟, 刘永学, 李满春, 王加胜, 陈映雪. 网络新闻中黄岩岛争端事件舆情研究——以新浪网“中菲黄岩岛争端”专题为例[J]. 现代图书情报技术, 2014, 30(2): 72-78.
Zou Wei, Liu Yongxue, Li Manchun, Wang Jiasheng, Chen Yingxue. Research on Public Opinion of the Disputes on Huangyan Island in the Network News:A Case Study of “Special Reports about the Disputes Between China and Philippines on Huangyan Island”on Sina. New Technology of Library and Information Service, 2014, 30(2): 72-78.
链接本文:  
https://manu44.magtech.com.cn/Jwk_infotech_wk3/CN/10.11925/infotech.1003-3513.2014.02.10      或      https://manu44.magtech.com.cn/Jwk_infotech_wk3/CN/Y2014/V30/I2/72

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