期刊文献+

网络舆情热点挖掘系统设计与实现

Design and Implementation of Internet Opinion Hotspot Mining Systems
下载PDF
导出
摘要 网络舆情对政治、经济、文化和社会各方面的影响越来越大。对互联网和社交网络发布的信息及各种反馈和观点进行舆情分析与判断,是舆情挖掘的重要手段。设计了网络舆情热点挖掘系统,通过文本处理、分词处理、复杂网络聚类及舆情热点提取等功能,使纷繁复杂信息中的热点话题及其舆情得以突出体现,为舆情热点定位、分析提供了有力的工具支持。 The effects of public opinion on the political, economic, cultural and social aspects more and more be attention. Based on the information published on the internet and social networking, as well as a variety of feedback and ideas, public opinion analysis and judgment are important means for opinion mining. Design and implement internet hotspot mining sys- tem with text processing, text segmenting, complex network community detecting and public hotspots extracting, such as features, makes hot topics and its public opinion to be highlighted and reflected in complex network information, and pro- vides powerful tools for hotspot positioning, analysis of public opinion support.
出处 《软件导刊》 2015年第7期111-113,共3页 Software Guide
基金 大连市社科联(社科院)与大连市高校工委联合立项课题(2013dlskybgx13) 辽宁省社会科学规划基金项目(L14BWJ010)
关键词 网络舆情 数据挖掘 舆情热点 Public Opinion Data Mining Opinion Hotspot
  • 相关文献

参考文献7

  • 1NISHA JEBASEELI A, KIRUBAKARAN E. A survey on senti- ment analysis of (product) reviews [J]. International Journal of Computer Applications, 2012, 47(11):36-39.
  • 2张寿华,刘振鹏.网络舆情热点话题聚类方法研究[J].小型微型计算机系统,2013,34(3):471-474. 被引量:25
  • 3HASEENA RAHMATH P. Opinion mining and sentiment analy- sis challenges and applications [J]. International Journal of Appli- cation or Innovation in Engineering &Management, 2014, 3(5): 401-403.
  • 4CHANDRAKALA S, SINDHU C. Opinion mining and sentiment classification: a survey [J]. ICTACT Journal on Soft Computing, 2012, 3(1) :420-427.
  • 5谢凤宏,张大为,黄丹,谢福鼎.基于复杂网络社团划分的文本聚类方法[J].计算机工程与设计,2011,32(3):1059-1061. 被引量:4
  • 6DAWEI ZHANG, FUDING XIE. Fuzzy analysis of community de- tection in complex network [J]. Physica An 2010, 389(22):5319- 5327.
  • 7SALTOM G, WONG A, YANG C S. A vector space model for automatic indexing [J].Communication of The ACM, 1975, 18 (11): 613- 620.

二级参考文献20

  • 1况夯,罗军.基于遗传FCM算法的文本聚类[J].计算机应用,2009,29(2):558-560. 被引量:5
  • 2彭京,杨冬青,唐世渭,付艳,蒋汉奎.一种基于语义内积空间模型的文本聚类算法[J].计算机学报,2007,30(8):1354-1363. 被引量:44
  • 3化柏林.知识抽取中的停用词处理技术[J].现代图书情报技术,2007(8):48-51. 被引量:38
  • 4PangningTan,SteinbachM,KumarV数据挖掘导论[M].北京:人民邮电出版社,2006:305-347.
  • 5Luo Congnan,Li Yanjun,Soon M Chung.Text document clustering based on neighbors [J]. Data & Knowledge Engineering, 2009,68(11):1271-1288.
  • 6Newman M E J,Girvan M.Finding and evaluating community structure in networks[J]. Phys Rev E,2004,69,026113.
  • 7Chen D B,Fu Y, Shang M S.A fast and efficient heuristic algorithm for detecting community structures in complex networks [J].Physica A,2009,388:2741-2749.
  • 8Wan Xiaojun.A novel document similarity measure based on earth mover's distance[J].Information Science,2007,177:3718-3730.
  • 9Lewis D D. Reuters-21578 text categorization collection [EB/ OL]. http://kdd.ics.uci.edu/databases/reuters21578,1999.
  • 10Rijsbergen C J. Information retrieval [Z]. 2nd ed. Buttersworth, London, 1979.

共引文献27

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部