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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >STRUCTURE-DRIVEN INDUCTION OF DECISION TREE CLASSIFIERS THROUGH NEURAL LEARNING
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STRUCTURE-DRIVEN INDUCTION OF DECISION TREE CLASSIFIERS THROUGH NEURAL LEARNING

机译:神经学习对决策树分类器的结构驱动诱导

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摘要

The decision tree classifiers represent a nonparametric classification methodology that is equally popular in pattern recognition and machine learning. Such classifiers are also popular in neural networks under the label of neural trees. This paper presents a new approach for designing these classifiers. Instead of following the common top-down approach to generate a decision tree, a structure-driven approach for induction of decision trees, SDIDT, is proposed. In this approach, a tree structure of fixed size with empty internal nodes, i.e. nodes without any splitting function, and labeled terminal nodes is first assumed. Using a collection of training vectors of known classification, a neural learning scheme combining backpropagation and soft competitive learning is then used to simultaneously determine the splits for each decision tree node. The advantage of the SDIDT approach is that it generates compact trees that have multifeature splits at each internal node which are determined on global rather than local basis; consequently it produces decision trees yielding better classification and interpretation of the underlying relationships in the data. Several well-known examples of data sets of different complexities and characteristics are used to demonstrate the strengths of the SDIDT method. (C) 1997 Pattern Recognition Society. Published by Elsevier Science Ltd. [References: 39]
机译:决策树分类器代表了一种非参数分类方法,该方法在模式识别和机器学习中同样受欢迎。这样的分类器在神经网络中以神经树的标签也很流行。本文提出了一种设计这些分类器的新方法。代替遵循通用的自上而下的方法来生成决策树,提出了一种结构驱动的决策树归纳方法SDIDT。在这种方法中,首先假定具有固定大小的树结构,其中内部节点为空,即没有任何拆分功能的节点,并且带有标记的终端节点。使用已知分类的训练向量的集合,然后将结合反向传播和软竞争学习的神经学习方案用于同时确定每个决策树节点的分割。 SDIDT方法的优势在于,它会生成紧凑的树,这些树在每个内部节点上具有多特征拆分,这些拆分是基于全局而非局部确定的;因此,它会生成决策树,从而对数据中的基本关系进行更好的分类和解释。不同复杂性和特征的数据集的几个著名示例被用来证明SDIDT方法的优势。 (C)1997模式识别学会。由Elsevier Science Ltd.发布[参考:39]。

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