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Global Induction of Oblique Model Trees: An Evolutionary Approach

机译:斜模型树的全局归纳:一种进化方法

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In this paper we propose a new evolutionary algorithm for global induction of oblique model trees that associates leaves with multiple linear regression models. In contrast to the typical top-down approaches it globally searches for the best tree structure, splitting hyper-planes in internal nodes and models in the leaves. The general structure of proposed solution follows a typical framework of evolutionary algorithms with an unstructured population and a generational selection. We propose specialized genetic operators to mutate and cross-over individuals (trees). The fitness function is based on the Bayesian Information Criterion. In preliminary experimental evaluation we show the impact of the tree representation on solving different prediction problems.
机译:在本文中,我们提出了一种用于倾斜模型树的全局归纳的新进化算法,该算法将叶子与多个线性回归模型相关联。与典型的自顶向下方法相反,它全局搜索最佳的树结构,在内部节点中拆分超平面,在叶子中拆分模型。提出的解决方案的总体结构遵循具有非结构化种群和世代选择的演化算法的典型框架。我们建议使用专门的遗传算子来变异和交叉个体(树)。适应度函数基于贝叶斯信息准则。在初步的实验评估中,我们展示了树表示对解决不同预测问题的影响。

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