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A Global Search Approach for Inducing Oblique Decision Trees Using Differential Evolution

机译:差分演化诱导斜决策树的全局搜索方法

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This paper describes the application of a Differential Evolution based approach for inducing oblique decision trees in a global search strategy. By using both the number of attributes and the number of class labels in a dataset, this approach determines the size of the real-valued vector utilized for encoding the set of hyperplanes used as test conditions in the internal nodes of an oblique decision tree. Also a scheme of three steps to map the linear representation of candidate solutions into feasible oblique decision trees is described. Experimental results obtained show that this approach induces more accurate classifiers than those produced by other proposed induction methods.
机译:本文介绍了基于差分进化的方法在全局搜索策略中诱导倾斜决策树的应用。通过使用数据集中的属性数量和类别标签数量,此方法确定用于对斜决策树的内部节点中用作测试条件的超平面集进行编码的实值向量的大小。还描述了将候选解的线性表示映射到可行的倾斜决策树中的三个步骤的方案。获得的实验结果表明,与其他拟议的归纳方法所产生的分类器相比,该方法归纳出更准确的分类器。

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