期刊文献+

基于知识情境的企业竞争情报多维挖掘研究 被引量:3

Multidimensional Mining of Enterprises' Competitive Intelligence Based on Knowledge Context
原文传递
导出
摘要 企业竞争情报总是蕴涵在多维数据环境中,需要对其采取多维挖掘手段。试图从利用知识情境辅助企业竞争情报多维挖掘入手,深入剖析知识情境在企业竞争情报挖掘过程中起到的关联激活、目标约束、结果评估等作用,并提出应用知识情境库,实施多维关联规则过滤和隐性关联架构策略实现企业竞争情报多维挖掘。 It is necessary that the enterprises' competitive intelligence is acquired by multidimensional mining in multidimensional data environment. Based on utilizing knowledge context to help the mining of multidimensional competitive intelligence of enterprises, this paper analyzes the functions of knowledge context in the course of mining, and puts forward the multidimensional mining method of enterprises' competitive intelligence, which can be realized based on the filtration strategy of multidimensional association rules and the construction strategy of tacit association.
作者 李敏 张玉峰
出处 《图书情报工作》 CSSCI 北大核心 2008年第3期77-79,107,共4页 Library and Information Service
基金 国家自然科学基金资助项目“基于数据挖掘的企业竞争情报智能采集机制研究”(项目编号:70573082)研究成果之一
关键词 知识情境 竞争情报 多维数据挖掘 knowledge context competitive intelligence multidimensional data mining
  • 相关文献

参考文献11

  • 1李建华.竞争情报对企业信息化的作用探讨.[2007-04-271.http://info.research.hc360.com/2005/06/0308154116.shtml.
  • 2Nonaka I.A dynamic theory of organizational kgowledge creation.Organization Scienc,1994,5(1):14-37.
  • 3Gunzel H,Albrecht J,Lehner W.Data mining in a multidimensional environment.ADBIS'99,LNCS 1691,1999:191-204.
  • 4王振宇,白石磊,熊范纶.多最小支持度策略的关联规则挖掘方法[J].小型微型计算机系统,2002,23(8):971-973. 被引量:20
  • 5Ingwersen P,J(?)rvelin K.Information retrieval in contexts[2006-01-20].http:H is.dcs.gin.ac.ukdcontext/IRinContext.WorkshopNotes-SIGIR2004.pdf.
  • 6Freund L,Toms E G.Using contextual factors to match intent[2006-01-201.http://irix.umiass.umd.edu/ACM-SIGIR2005-IRix-proceedings.pdf.
  • 7Ingwersen P,J(?)rvelin K.Information retrieval in contexts-IRiX.[2006-3-20].http://www.sigir.org/forum/2005D/2005d_sigirforum_ingwersen.pdf.
  • 8Huang W H,Webster D.Intelligent RSS news aggregation based on semantic contexts//Proceedings of ACM SIGIR 2004Workshop on Information Retrieval in Context(IRiX),Sheffield,UK,July,2004:40-43.
  • 9李翠平,李盛恩,王珊,杜小勇.一种基于约束的多维数据异常点挖掘方法[J].软件学报,2003,14(9):1571-1577. 被引量:11
  • 10Nejdl W,Paiu R.Desktop search-how contextual information influences search results & rankings.Proceedings of ACM S1GIR 2005 Workshop on Information Retrieval in Context(IRiX),Salvador,Brazil,August,2005:29-32.

二级参考文献14

  • 1..http://www.olapcouncil.org/research/APB 1R2_spec.pdf,1998.
  • 2Han J, Chee S, Chiang J. Issues for on-line analytical mining of data warehouses. In: Haas L, Tiwary A, eds. Proceedings of the SIGMOD'98 Workshop on Research Issues on Data Mining and Knowledge Discovery. Seattle: ACM Press, 1998.2:1~2:5.
  • 3Sarawagi S, Agrawal R, Megiddo N. Discovery-Driven exploration of OLAP data cubes. In: Schek H, Saltor F, Ramos I, Alonso G,eds. Proceedings of the 6th International Conference on Extending Database Technology. Valencia: Springer-Verlag, 1998.168~182.
  • 4Harinarayan V, Rajaraman A, Ullman J. Implementing data cubes efficiently. In: Jagadish H, Mumick I, eds. Proceedings of the ACM-SIGMOD International Conference on Management of Data. Montreal: ACM Press, 1996. 205~216.
  • 5Liang W, Orlowska ME, Yu JX. Optimizing multiple dimensional queries simultaneously in multidimensional databases VLDB Journal, 2000,8(3-4):319~338.
  • 6Srikant R, Vu Q, Agrawal R. Mining association rules with item constraints. In: Heckerman D, Mannila H, Pregibon D, eds.Proceedings of the 1997 International Conference on Data Mining and Knowledge Discovery. AAAI Press, 1997. 67~73.
  • 7Bayardo R, Agrawal R, Gunopulos D. Constraint-Based rule mining on large, dense data sets. In: Papazoglou M, ed. Proceedings of the 1999 International Conference on Data Engineering. Sydney: IEEE Computer Society, 1999. 188~197.
  • 8Klemettinen M, Mannila P, Ronkainen P. Finding interesting rules from large sets of discovered association rules. In: Nicholas C,Mayfield J, eds. Proceedings of the 3rd International Conference on Information and Knowledge Management. ACM Press, 1994.401~407.
  • 9Imielinski T, Khachiyan L, Abdulghani A. Cubegrades: Generalizing association rules. Data Mining and Knowledge Discovery,2002,6(3):219~257.
  • 10Sarawagi S. Explaining differences in multidimensional aggregates. In: Brodie M, ed. Proceedings of the 25th International Conference on Very Large Databases. Edinburgh: Morgan Kaufmann Publishers, 1999.42~53.

共引文献46

同被引文献12

引证文献3

二级引证文献5

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