期刊文献+

数据挖掘研究进展 被引量:11

Research progress of data mining
下载PDF
导出
摘要 数据挖掘经过十几年的研究,很多传统问题获得了大量研究.近年来,数据挖掘研究与应用迅猛发展,出现了很多新的方法、系统和应用.首先介绍了数据挖掘概念、起源,然后总结了数据挖掘技术的最新发展,便于数据挖掘研究者进行资料的整理和总结. Recently, data mining and its applications have already come into many disciplines and achieved plentiful fruits in diversified fields. This paper surveys the research progress of data mining, introduces the origin of data mining through the statement of researchers in famous KDD conferences and journals, and then generalizes the research progress in the field. The review supplies the new view for the beginners and data mining researchers.
作者 王金龙
出处 《青岛理工大学学报》 CAS 2007年第4期80-82,93,共4页 Journal of Qingdao University of Technology
关键词 数据挖掘 研究进展 趋势 data mining research progress trend
  • 相关文献

参考文献28

  • 1韩家炜,坎伯.数据挖掘概念与技术[M].2版.范明,孟小峰,译.北京:机械工业出版社,2006.
  • 2Witten I H, Frank E. Data Mining: Practical Machine Learning Tools and Techniques[M]. Second Edition. Morgan Kaufmann, t 2005.
  • 3Hand D, Mannila H, Smyth P. Principles of Data Mining[M]. MIT Press, 2001.
  • 4Hastie T, Tibshirani R, Friedman J. The Element of Statistical Learning: data mining, inference and prediction[M]. Springer, 2001.
  • 5Zhou Z H. Book review: Three perspectives of data mining[J]. Artificial Intelligence, 2003, 143(1):139-146.
  • 6Yang Q, Wu X D. 10 challenging problems in data mining research[J]. International Journal of Information Technology and Decision Making, 2006, 5:597-604.
  • 7Agrawal R. Next frontier[C]// Proc. 12th ACM SIGKDD international conference on Knowledge discovery and data mining. ACM Press, 2006.
  • 8Piatetsky-Shapiro G, Grossman R, Djeraba C, et al. What Are The Grand Challenges for Data Mining? KDD-2006 Panel Report[J]. SIGKDD Explorations, 2006, 8(2): 70-77.
  • 9陈华,奚敏.概率模型构造及其思维方法[J].青岛理工大学学报,2006,27(5):124-125. 被引量:7
  • 10Dzeroski S. Multi-relational data mining: an introduction[J]. SIGKDD Explorations, 2003, 5(1): 1-16.

二级参考文献66

  • 1金澈清,钱卫宁,周傲英.流数据分析与管理综述[J].软件学报,2004,15(8):1172-1181. 被引量:161
  • 2代月明,朱习军,刘连玉.基于集体度一置信度的关联规则挖掘[J].青岛建筑工程学院学报,2005,26(2):74-77. 被引量:2
  • 3杨志林.非线性Hammerstein本征值问题的非平凡解[J].青岛理工大学学报,2005,26(5):90-94. 被引量:5
  • 4Babcock B, Babu S, Datar M, Motwani R, Widom J. Models and issues in data streams. In: Popa L, ed. Proc. of the 21st ACM SIGACT-SIGMOD-SIGART Symp. on Principles of Database Systems. Madison: ACM Press, 2002. 1~16.
  • 5Terry D, Goldberg D, Nichols D, Oki B. Continuous queries over append-only databases. SIGMOD Record, 1992,21(2):321-330.
  • 6Avnur R, Hellerstein J. Eddies: Continuously adaptive query processing. In: Chen W, Naughton JF, Bernstein PA, eds. Proc. of the 2000 ACM SIGMOD Int'l Conf. on Management of Data. Dallas: ACM Press, 2000. 261~272.
  • 7Hellerstein J, Franklin M, Chandrasekaran S, Deshpande A, Hildrum K, Madden S, Raman V, Shah MA. Adaptive query processing: Technology in evolution. IEEE Data Engineering Bulletin, 2000,23(2):7-18.
  • 8Carney D, Cetinternel U, Cherniack M, Convey C, Lee S, Seidman G, Stonebraker M, Tatbul N, Zdonik S. Monitoring streams?A new class of DBMS applications. Technical Report, CS-02-01, Providence: Department of Computer Science, Brown University, 2002.
  • 9Guha S, Mishra N, Motwani R, O'Callaghan L. Clustering data streams. In: Blum A, ed. The 41st Annual Symp. on Foundations of Computer Science, FOCS 2000. Redondo Beach: IEEE Computer Society, 2000. 359-366.
  • 10Domingos P, Hulten G. Mining high-speed data streams. In: Ramakrishnan R, Stolfo S, Pregibon D, eds. Proc. of the 6th ACM SIGKDD Int'l Conf. on Knowledge Discovery and Data Mining. Boston: ACM Press, 2000. 71-80.

共引文献198

同被引文献109

引证文献11

二级引证文献24

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