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A comparative study on heuristic algorithms for generating fuzzy decision trees

机译:生成模糊决策树的启发式算法的比较研究

摘要

Fuzzy decision tree induction is an important way of learning from examples with fuzzy representation. Since the construction of optimal fuzzy decision tree is NP-hard, the research on heuristic algorithms is necessary. In this paper, three heuristic algorithms for generating fuzzy decision trees are analyzed and compared. One of them is proposed by the authors. The comparisons are two fold. One is the analytic comparison based on expanded attribute selection and reasoning mechanism; the other is the experimental comparison based on the size of generated trees and learning accuracy. The purpose of this study is to explore comparative strengths and weaknesses of the three heuristics and to show some useful guidelines on how to choose an appropriate heuristic for a particular problem.
机译:模糊决策树归纳是从具有模糊表示的示例中学习的重要方式。由于最优模糊决策树的构造是NP难的,因此有必要对启发式算法进行研究。本文分析和比较了三种启发式算法,用于生成模糊决策树。其中之一是由作者提出的。比较有两个方面。一种是基于扩展属性选择和推理机制的解析比较;另一个是根据生成的树的大小和学习准确性进行的实验比较。这项研究的目的是探索三种启发式方法的相对优势和劣势,并就如何针对特定问题选择合适的启发式方法提供一些有用的指导。

著录项

  • 作者

    Wang XZ; Yeung DS; Tsang ECC;

  • 作者单位
  • 年度 2001
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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