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decision tree classifier meaning in English

决策树分类器
树型判定分类程序
树形判定分类程序
树形判定分类法

Examples

  1. On the basis of analyzing the classification principle of decision tree classifier and parallelpiped classifier , a new classification method based on normalized euclidian distance , called wmdc ( weighted minimum distance classifier ) , was proposed
    通过分析多重限制分类器和决策树分类器的分类原则,提出了基于标准化欧式距离的加权最小距离分类器。
  2. A decision tree classifier using a scalable id3 algorithm is developed by microsoft visual c + + 6 . 0 . some actual training set has been put to test the classifier and the experiment shows that the classifier can successfully build decision trees and has good scalability
    最后着重介绍了作者独立完成的一个决策树分类器。它使用的核心算法为可伸缩的id3算法,分类器使用microsoftvisualc + + 6 . 0开发。
  3. It is demonstrated by simulation data . as for classifier , it presents the artificial neural network . based on three methods of modulation recognition and decision tree classifier and neural network classifier , experimentations have been carried through
    在分类器设计方面,介绍了利用神经网络进行模式识别的原理,采用前述的三种特征提取方法,分别结合判决树分类器和神经网络分类器对信号进行分类,并且进行了试验论证。
  4. Decision tree models are simple and easy to understand , easily converted into rules . it also can be constructed relatively fast compare to some of other methods . moreover , decision tree classifiers obtain similar and sometimes better accuracy when compared with some of other classification methods
    与其他分类算法相比,它能够较快的建立简单、易于理解的模型,容易转换成规则,而且具有与其他分类模型同样的,有时甚至更好的分类准确性。
  5. This paper first illustrated some typical algorithms for large dataset , then gave off a processing diagram in common use second , for the dataset with large quantity and many attributes , we renovated the calculation method of the attribute ' s statistic information , giving off a ameliorated algorithm this thesis consists of five sections chapter one depicts the background knowledge and illustrates the position of data mining among many concepts also here is the data mining ' s category chapter two describes the thought of classification data mining technique , puts forward the construction and pruning algorithms of decision tree classifier chapter three discusses the problems of adapting data mining technique with large scale dataset , and demonstrates some feasible process stepso also here we touches upon the combination r - dbms data warehouse chapter four is the design of the program and some result chapter five gives the annotation the conclusion , and the arrangement of future research
    本论文的组织结构为:第一章为引言,作背景知识介绍,摘要阐述了数据挖掘在企业知识管理、泱策支持中的定位,以及数据挖掘的结构、分类;第二章讲述了分类数据挖掘的思路,重点讲解了泱策树分类器的构建、修剪,第三章针对大规模数据对数据挖掘技术的影响做了讲解,提出了可采取的相应的处理手段,以及与关系数据库、数据仓库结合的问题;第四章给出了论文程序的框架、流程设计,以及几个关键问题的设计;第五章对提出的设计进行简要的评述,做论文总结,并对进一步的研究进行了规划。

Related Words

  1. structured classifier
  2. important decision
  3. decision machine
  4. decision verifiability
  5. great decision
  6. carterfone decision
  7. decision region
  8. decision tree
  9. funding decision
  10. binary decision
  11. decision tree
  12. decision tree analysis
  13. decision tree diagram
  14. decision tree learning
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