期刊文献+

基于C4.5算法的输差分析在数字气田中的应用 被引量:3

Based on C4.5 analysis on measuring error for Digital Gas Field
在线阅读 下载PDF
导出
摘要 在天然气输差分析的研究中,输差原因错综复杂,但在其影响因素数据中许多潜在有价值的规律未被发现。在各种机器学习算法中,决策树以其简单容易实现等特点被认可。本文首先介绍了分类器的基本概念和决策树构建思路,然后讲述了在天然气信息数据库的基础上如何建立决策树分类器,接着利用xml的优越性进行存储,并依据创建的决策树对数差进行预测。 In the studies of analysis on measuring error of natural gas ,reason of measuring error is complex, but the potential and valuable rules hid in the result data have not been discovered. The algorithm of decision trees is well known due to simpleness and easy to realize in machine learning.Firstly we describe how to construct a decision tree classifier on the information database made by natural gas corporation,then store it taking advantage of xml,and forecast measuring error by the desion tree created.
出处 《微计算机信息》 北大核心 2006年第05X期7-9,共3页 Control & Automation
基金 "十五"国家科技攻关项目项目编号:2004BA616A-11
关键词 天然气数据 输差分析 数据挖掘 决策树 C4.5 XML natural gas data analysis on measuring error Data mining Decision tree C4.5 Xml
  • 相关文献

参考文献3

二级参考文献10

  • 1钟秀玉,凌捷.计算机动态取证的数据分析技术研究[J].计算机应用与软件,2004,21(9):26-27. 被引量:19
  • 2丁丽萍.论计算机取证的原则和步骤[J].中国人民公安大学学报(自然科学版),2005,11(1):70-73. 被引量:19
  • 3何小东,刘卫国.数据挖掘中关联规则挖掘算法比较研究[J].计算机工程与设计,2005,26(5):1265-1268. 被引量:36
  • 4Wang G Y, Wu Y, Liu F. Generating rules and reasoning under inconsistencies [A]. IEEE International Conference on Industrial Electronics, Control and Instrumentation [C]. Nagoya, 2000, 2536
  • 5Wang G Y, Liu F. The inconsistency in rough set based rule generation [A]. The Second International Conference on Rough Sets and Current Trends in Computing [C]. Japan, 2000. 332
  • 6Pawlak Z. Rough Sets: Theoretical Aspects of Reasoning about Data [M]. Amsterdam: Kluwer Academic Publishers, 1991
  • 7Vapnik V N. The Nature of Statistical Learning Theory [M]. NY: Springer-Verlag, 1995
  • 8Zhang D Z, Yang B R. A new knowledge discovery method for saentific and techndogic [J]. J Univ Sci Technol Beijing, 2002,9(13): 237
  • 9Robbins, Judd. An explanation of computer forensics, http://www.computer forensics.net/forensics.htm.
  • 10王玲,钱华林.计算机取证技术及其发展趋势[J].软件学报,2003,14(9):1635-1644. 被引量:199

共引文献15

同被引文献15

  • 1范洁,常晓航,杨岳湘.基于属性相关性的决策树规则生成算法[J].计算机仿真,2006,23(12):90-92. 被引量:9
  • 2Quinlan.J R.C4.5 Programs for Machine Learning[M].San Mateo: Morgan Kaufmann Publishers,Inc, 1993.pp:202-207
  • 3Quinlan J R. Induction of decision tree [J].Machine learning, 1986,(1):81-106.
  • 4Lukasz A. Kurgan, Krzysztof J. Cios. (2004). CAIM Discretization Algorithm[J]. IEEE Transactions on Knowledge and Data Engineering, VOL. 16, NO. 2.pp:145-153.
  • 5Li, H., Setiono, R. (1997) "Feature Selection via Discretization." [J]. IEEE Transactions on Knowledge and Data Engineering, vol. 9, no. 4, pp:642-645.
  • 6Quinlan J R. Induction of decision tree [J]. Machine Learning, 1986, 1 (1): 81-106.
  • 7邱桃荣,熊筱芳,白小明.基于Rough集的近似最优决策树生成算法[J].微计算机信息,2007(01Z):296-297. 被引量:5
  • 8Quinlan J R.Induction of Decision Trees [J].Machine Learning, 1986,1(1):81-106.
  • 9Quinlan J R.C4.5:Programs for Machine Leaming[M].San Mateo, California:Morgan Kaufmann,1993.
  • 10Ruggieri S.Efficient C4.5 [J]:IEEE Transactions on Knowledge and Data Engineering ,2002,14(2):438-444.

引证文献3

二级引证文献13

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